Dynamically Hiding Information in Noise

ABSTRACT

A process of hiding a key or data inside of random noise is introduced, whose purpose is to protect the privacy of the key or data. In some embodiments, the random noise is produced by quantum randomness, using photonic emission with a light emitting diode. When the data or key generation and random noise have the same probability distributions, and the key size is fixed, the security of the hiding can be made arbitrarily close to perfect secrecy, by increasing the noise size. The hiding process is practical in terms of infrastructure and cost, utilizing the existing TCP/IP infrastructure as a transmission medium, and using light emitting diode(s) and a photodetector in the random noise generator. In some embodiments, symmetric cryptography encrypts the data before the encrypted data is hidden in random noise, which substantially amplifies the computational complexity.

1 RELATED APPLICATIONS

This application claims priority benefit of U.S. Provisional Patent Application Ser. No. 62/085,338, entitled “Hiding Data Transmissions in Random Noise”, filed Nov. 28, 2014, which is incorporated herein by reference; this application claims priority benefit of U.S. Provisional Patent Application Ser. No. 62/092,795, entitled “Hiding Data Transmissions in Random Noise”, filed Dec. 16, 2014, which is incorporated herein by reference; this application claims priority benefit of U.S. Non-provisional patent application Ser. No. 14/953,300, entitled “Hiding Information in Noise”, filed Nov. 28, 2015, which is incorporated herein by reference.

This application is a continuation-in-part of U.S. Non-provisional patent application Ser. No. 14/953,300, entitled “Hiding Information in Noise”, filed Nov. 28, 2015, which is incorporated herein by reference. This application is a continuation-in-part of U.S. Non-provisional patent application Ser. No. 15/158,596, entitled “Hiding a Public Key Exchange in Noise”, filed May 19, 2016, which is incorporated herein by reference.

2 BACKGROUND—FIELD OF INVENTION

The present invention relates broadly to protecting the privacy of information and devices. The processes and device are generally used to maintain the privacy of information transmitted through communication and transmission systems. For example, the hiding processes may be used to protect the metadata of a phone call; in some embodiments, the phone call may be transmitted via voice over IP (internet protocol) with a mobile phone. These processes and devices also may be used to hide passive data stored on a computer or another physical device such as a tape drive. In some embodiments, symmetric cryptographic methods and machines are also used to supplement the hiding process.

In an embodiment, the information (data) is hidden by a sending agent, called Alice. Alice transmits the hidden data to a receiving agent, called Bob. The receiving agent, Bob, applies an extraction process or device. The output of this extraction process or device is the same information (data) that Alice gathered before hiding and sending it. Eve is the name of the agent who is attempting to obtain the information or data. One of Alice and Bob's primary objectives is to assure that Eve cannot capture the private information that was hidden and transmitted between them.

In another embodiment, Alice desires to hide data and securely store the hidden data somewhere and retrieve it and access the hidden data at a later time. The output of this extraction process or device is the same information (data) that Alice gathered before hiding and storing it.

3 BACKGROUND—PRIOR ART

The subject matter discussed in this background section should not be assumed to be prior art merely as a result of its mention in the background section. Similarly, a problem mentioned in the background section or associated with the subject matter of the background section should not be assumed to have been previously recognized in the prior art. The subject matter in the Summary and some Advantages of Invention section represents different approaches, which in and of themselves may also be inventions, and various problems, which may have been first recognized by the inventor.

In information security, a fundamental problem is for a sender, Alice, to securely transmit a message M to a receiver, Bob, so that the adversary, Eve, receives no information about the message. In Shannon's seminal paper [1], his model assumes that Eve has complete access to a public, noiseless channel: Eve sees an identical copy of ciphertext C that Bob receives, where C(M, K) is a function of message M lying in message space

and secret key K lying in key space

.

In this specification, the symbol P will express a probability. The expression P(E) is the probability that event E occurs and it satisfies 0≤P(E)≤1. For example, suppose the sample space is the 6 faces of die and E is the event of rolling a 1 or 5 with that die and each of the 6 faces is equally likely. Then P(E)= 2/6=⅓. The conditional probability

${P\left( A \middle| B \right)} = {\frac{P\left( {A\bigcap B} \right)}{P(B)}.}$

P(A∩B) is the probability that event A occurs and also event B occurs. The conditional probability P(A|B) expresses the probability that event A will occur, under the condition that someone knows event B already occurred. The expression that follows the symbol “|” represents the conditional event. Events A and B are independent if P(A∩B)=P(A)P(B).

Expressed in terms of conditional probabilities, Shannon [1] defined a cryptographic method to be perfectly secret if P(M)=P(M|Eve sees ciphertext C) for every cipher text C and for every message M in the message space

. In other words, Eve has no more information about what the message M is after Eve sees ciphertext C pass through the public channel. Shannon showed for a noiseless, public channel that the entropy of the keyspace

must be at least as large as the message space

in order to achieve perfect

secrecy.

Shannon's communication secrecy model [1] assumes that message sizes in the message space are finite and the same size. Shannon's model assumes that the transformations (encryption methods) on the message space are invertible and map a message of one size to the same size. Shannon's model assumes that the transformation applied to the message is based on the key. In the prior art, there is no use of random noise that is independent of the message or the key. In the prior art, there is no notion of being able to send a hidden or encrypted message inside the random noise where Eve is not necessarily revealed the size of the message. In the prior art, there is no notion of using random noise to hide the secret channel and transmitting a key inside this channel that is indistinguishable from the noise.

Quantum cryptography was introduced by Weisner and eventually published by Bennett, Brassard, et al. [2, 3]. Quantum cryptography based on the uncertainty principle of quantum physics: by measuring one component of the polarization of a photon, Eve irreversibly loses her ability to measure the orthogonal component of the polarization. Unfortunately, this type of cryptography requires an expensive physical infrastructure that is challenging to implement over long distances [4, 5]. Furthermore, Alice and Bob still need a shared, authentication secret to successfully perform this quantum cryptography in order to assure that Eve cannot corrupt messages about the polarization bases, communicated on Alice and Bob's public channel.

4 SUMMARY AND SOME ADVANTAGES OF THE INVENTION(S)

In some parts of the prior art, conventional wisdom believes that hiding data in the open cannot provide adequate information security. The invention(s), described herein, demonstrate that our process of hiding data inside noise is quite effective. A process for hiding data inside of random noise is demonstrated and described. In some embodiments, the data hidden is a key. In some embodiments, the data hidden is a public key. In some embodiments, the data hidden is encrypted data. In some embodiments, the data hidden is encrypted data that was first encrypted by a block cipher. In some embodiments, the data hidden is encrypted data that was first encrypted by a stream cipher. In some embodiments, the hidden data may be hidden metadata that is associated with the TCP/IP infrastructure [6] used to transmit information.

The invention(s) described herein are not bound to Shannon's limitations [1] because they use noise, rather than seek to eliminate noise. When the data generation and random noise have a uniform probability distribution, and the key size is fixed, the security of the key transmission can be made arbitrarily close to perfect secrecy—where arbitrarily close is defined in section 7.11—by increasing the noise size. The processes, devices and machines described herein are practical; they can be implemented with current TCP/IP infrastructure acting as a transmission medium and a random noise generator providing the random noise and key generation.

5 ADVANTAGES and FAVORABLE PROPERTIES

Overall, our invention(s) that hide data and keys inside random noise exhibits the following favorable security properties.

-   -   The hiding process is O(n).     -   For a fixed key size m bits and ρ=n−m bits of random noise, as         ρ−∞, the security of the hidden data can be made arbitrarily         close to perfect secrecy. In some applications, the key size can         also be kept secret and is not revealed to Eve.     -   From the binomial distribution, the closeness to perfect secrecy         can be efficiently computed.     -   The scatter map a can reused when both the key generation and         noise generation have a uniform probability distribution and a         new random key and new noise are created for each transmission.     -   The reuse property enables a practical process of hiding data         that is first encrypted by a block or stream cipher. The         complexity of finding this hidden encrypted data can be         substantially greater than the computational complexity of the         underlying block or stream cipher. See section 7.14.     -   Our hiding process uses a noiseless, public channel, which means         it can implemented with our current Transmission Control         Protocol/Internet Protocol internet infrastructure (TCP/IP). No         expensive, physical infrastructure is needed to create noisy         channels or transmit and maintain polarized photons, as is         required by the prior art of quantum cryptography. Random noise         generators are commercially feasible and inexpensive. A random         noise generator that produces more than 10,000 random bits per         second can be manufactured in high volume for less than three         U.S. dollars per device.     -   Alice and Bob possess their sources of randomness. This system         design decentralizes the security to each user. Decentralization         helps eliminate potential single points of failure, and         backdoors in the transmission medium that may be outside the         inspection and control of Alice and Bob.     -   In an embodiment where Alice wishes to store her hidden data,         the inventions described herein have an additional advantage         over the prior art of cryptography. In the inventions described         herein, Eve does not know the size of the hidden data. The noise         size can be substantially larger than the data size so that         hidden data could be a telephone number in one case and the         whole sequence of DNA of human chromosome 4 in a second case of         hiding. Typically in the prior art, an encryption preserve the         file size or voice packet size.

6 DESCRIPTION of FIGURES

In the following figures, although they may depict various examples of the invention, the invention is not limited to the examples depicted in the figures.

FIG. 1A shows an embodiment of an information system for sending and receiving hidden information or data.

FIG. 1B shows an embodiment of a process for hiding information that can be used in the embodiment of FIG. 1A.

FIG. 1C shows an embodiment of an information system for sending and receiving hidden public keys.

FIG. 1D shows an embodiment of a process for hiding public keys that can be used in the embodiment of FIG. 1C.

FIG. 1E shows an embodiment of storing machine 180 that executes hiding process 184 to hide data 182 and store hidden data 186 in memory system 188.

FIG. 2A shows an embodiment of a computer network transmitting hidden data or keys, hidden encrypted data or hidden metadata. In some embodiments, the transmission may be over the Internet or a part of a network that supports an infrastructure such as the electrical grid, a financial exchange, or a power plant, which can be used with the embodiment of FIG. 1A.

FIG. 2B shows an embodiment for hiding information, which includes a processor, memory and input/output system, that may be sending and/or receiving machines of FIG. 1A.

FIG. 3A shows an embodiment of a USB drive that can act as a sending machine and receiving machine to store and protect a user's data.

FIG. 3B shows an embodiment of an authentication token, which may include the sending and/or receiving machines of FIG. 1A, that contains a computer processor that can hide data or hide keys.

FIG. 4 shows a mobile phone embodiment 400 that hides wireless voice metadata and extracts wireless voice data that was hidden, which may include the sending and/or receiving machines of FIG. 1A. The mobile phone 500 is an embodiment that sends wireless hidden metadata, hidden encrypted data, or hidden keys to an automobile, which may include the sending and/or receiving machines of FIG. 1A.

FIG. 5 shows key(s) hidden in random noise where the probability distribution of the key and the noise are uniform.

FIG. 6 shows a data hidden in random noise where the probability distribution of the data and the noise are uniform.

FIG. 7 shows a key hidden in random noise where the probability distribution of the key and the noise are not the same. The probability distribution of the key is somewhat biased.

FIG. 8 shows data hidden in random noise where the probability distribution of the data and the noise are not the same. The probability distribution of the data is more biased.

FIG. 9A shows an embodiment of a non-deterministic generator, based on quantum randomness. Non-deterministic generator 942 is based on the behavior of photons to help generate noise and in some embodiments one or more keys. Non-deterministic generator 942 contains a light emitting diode 946 that emits photons and a phototransistor 944 that absorbs photons.

FIG. 9B shows an embodiment of a non-deterministic generator, based on quantum randomness. Non-deterministic generator 952 is based on the behavior of photons to help generate noise and in some embodiments one or more keys. Non-deterministic generator 952 contains a light emitting diode 956 that emits photons and a photodiode 954 that absorbs photons.

FIG. 9C shows an embodiment of a deterministic generator 962, implemented with a machine. Deterministic generator 962 may generate one or more keys 970 or noise 972. Deterministic generator 962 has generator update instructions 966, one-way hash instructions 964 and one-way hash instructions 968.

FIG. 9D shows an embodiment of a hiding locator machine 980 with dynamic hiding locations 982, one-way hash Φ instructions 988, hiding locator instructions 986, one-way hash Ψ instructions 988, and noise 990.

FIG. 10 shows a light emitting diode, which emits photons and in some embodiments is part of the random number generator. The light emitting diode contains a cathode, a diode, an anode, one terminal pin connected to the cathode and one terminal pin connected to the anode, a p-layer of semiconductor, an active region, an n-layer of semiconductor, a substrate and a transparent plastic case.

FIG. 11 shows a scatter map that hides 128 bits of data inside of 128 bits of noise. In an embodiment, the data is a 128 bit public key.

FIG. 12 shows a data transformation that transforms 18 bits of data to a larger sequence of data.

FIG. 13 shows probabilities after Eve observes a hidden key or hidden data inside random noise. The hidden key or hidden noise is represented as

.

7 DETAILED DESCRIPTION

7.1 Information System

In this specification, the term “data” is broad and refers to any kind of information. In some embodiments, data may refer to plaintext information. In some embodiments, data may refer to voice information, transmitted with a landline phone or mobile phone. In some embodiments, data may refer to metadata. In some embodiments, data may refer to email or other information available on the Internet. In some embodiments, data may refer to the information in a sequence of values. In some embodiments, data may refer to the information in a sequence of bit values. In some embodiments, data may refer to the information in a sequence of numbers. In some embodiments, data may refer to the information in a sequence or collection of physical values or physical measurements. In some embodiments, data may refer to the information in a physical location (e.g., GPS coordinates of an auto or a mailing address in Venezia, Italia) or to the information in an abstract location—for example, a computer memory address or a virtual address. In some embodiments, data may refer to the information contained in Shakespeare's King Lear or Dostoevsky's Grand Inquisitor or Euclid's Elements. In some embodiments, data may refer to the information in Kepler's astronomical measurements or a collection of geophysical measurements. In some embodiments, data may refer to the information in to a sequence of times or collection of times. In some embodiments, data may refer to the information in statistical data such as economic or insurance information. In some embodiments, data may refer to medical information (e.g., an incurable cancer diagnosis) or genetic information (e.g., that a person has the amino acid substitution causing sickle cell anemia). In some embodiments, data may refer to the information in a photograph of friends or family or satellite photos. In some embodiments, data may refer to the information in a code or sequence of codes. In some embodiments, data may refer to the information in a sequence of language symbols for a language that has not yet been discovered or designed. In some embodiments, data may refer to financial information—for example, data may refer to a bid quote on a financial security, or an ask quote on a financial security. In some embodiments, data may refer to information about a machine or a collection of machines—for example, an electrical grid or a power plant. In some embodiments, data may refer to what electrical engineers sometimes call signal in information theory. In some embodiments, data may refer to a cryptographic key. In some embodiments, data may refer to a sequence or collection of computer program instructions (e.g., native machine instructions or source code information). In some embodiments, data may refer to a prime number or a mathematical formula or a mathematical invariant information. In some embodiments, data may refer to an internet protocol address or internet traffic information. In some embodiments, data may refer to a combination or amalgamation or synthesis of one or more of these types of aforementioned information.

In this specification, the term “noise” is information that is distinct from data and has a different purpose. Noise is information that helps hide the data so that the noise hinders the adversary Eve from finding or obtaining the data. This hiding of the data helps maintain the privacy of the data. In some embodiments, hiding the data means rearranging or permuting the data inside the noise. An example of data is a key. Hiding a key inside noise helps protect the privacy of the key; the key may subsequently help execute a cryptographic algorithm by a first party (e.g., Alice) or a second party (e.g., Bob).

In this specification, the term “location” may refer to geographic locations and/or storage locations. A particular storage location may be a collection of contiguous and/or noncontiguous locations on one or more machine readable media. Two different storage locations may refer to two different sets of locations on one or more machine-readable media in which the locations of one set may be intermingled with the locations of the other set.

In this specification, the term “machine-readable medium” refers to any non-transitory medium capable of carrying or conveying information that is readable by a machine. One example of a machine-readable medium is a computer-readable medium. Another example of a machine-readable medium is paper having holes that are detected that trigger different mechanical, electrical, and/or logic responses. The term machine-readable medium also includes media that carry information while the information is in transit from one location to another, such as copper wire and/or optical fiber and/or the atmosphere and/or outer space.

In this specification, the term “process” refers to a series of one or more operations. In an embodiment, “process” may also include operations or effects that are best described as non-deterministic. In an embodiment, “process” may include some operations that can be executed by a digital computer program and some physical effects that are non-deterministic, which cannot be executed by a digital computer program and cannot be performed by a finite sequence of processor instructions.

In this specification, the machine-implemented processes implement algorithms and non-deterministic processes on a machine. The formal notion of “algorithm” was introduced in Turing's work [7] and refers to a finite machine that executes a finite number of instructions with finite memory. In other words, an algorithm can be executed with a finite number of machine instructions on a processor. “Algorithm” is a deterministic process in the following sense: if the finite machine is completely known and the input to the machine is known, then the future behavior of the machine can be determined. However, there is quantum random number generator (QRNG) hardware [9, 10] and other embodiments that measure quantum effects from photons (or other physically non-deterministic processes), whose physical process is non-deterministic. The recognition of non-determinism produced by quantum randomness and other quantum embodiments is based on many years of experimental evidence and statistical testing. Furthermore, the quantum theory—derived from the Kochen-Specker theorem and its extensions [8, 9]—predicts that the outcome of a quantum measurement cannot be known in advance and cannot be generated by a Turing machine (digital computer program). As a consequence, a physically non-deterministic process cannot be generated by an algorithm: namely, a sequence of operations executed by a digital computer program. FIG. 9A shows an embodiment of a non-deterministic process arising from quantum events; that is, the emission and absorption of photons.

Some examples of physically non-deterministic processes are as follows. In some embodiments that utilize non-determinism, photons strike a semitransparent mirror and can take two or more paths in space. In one embodiment, if the photon is reflected by the semitransparent mirror, then it takes on one bit value b∈{0, 1}; if the photon passes through by the semitransparent mirror, then the non-deterministic process produces another bit value 1−b. In another embodiment, the spin of an electron may be sampled to generate the next non-deterministic bit. In still another embodiment, a protein, composed of amino acids, spanning a cell membrane or artificial membrane, that has two or more conformations can be used to detect non-determinism: the protein conformation sampled may be used to generate a non-deterministic value in {0, . . . n−1} where the protein has n distinct conformations. In an alternative embodiment, one or more rhodopsin proteins could be used to detect the arrival times of photons and the differences of arrival times could generate non-deterministic bits. In some embodiments, a Geiger counter may be used to sample non-determinism.

In this specification, the term “photodetector” refers to any type of device or physical object that detects or absorbs photons. A photodiode is an embodiment of a photodetector. A phototransistor is an embodiment of a photodetector. A rhodopsin protein is an embodiment of a photodetector.

In this specification, the term “key” is a type of information and is a value or collection of values to which one or more operations are performed. In some embodiments, one or more of these operations are cryptographic operations. {0, 1}^(n) is the set of all bit-strings of length n. When a key is represented with bits, mathematically a n-bit key is an element of the collection {0, 1}^(n) which is the collection of strings of 0's and 1's of length n. For example, the string of 0's and 1's that starts after this colon is a 128-bit key: 01100001 11000110 01010011 01110001 11000101 10001110 11011001 11010101 01011001 01100100 10110010 10101010 01101101 10000111 10101011 00010111. In an embodiment, n=3000 so that a key is a string of 3000 bits.

In other embodiments, a key may be a sequence of values that are not represented as bits. Consider the set {A, B, C, D, E}. For example, the string that starts after this colon is a 40-symbol key selected from the set {A,B,C,D,E}: ACDEB AADBC EAEBB AAECB ADDCB BDCCE ACECB EACAE. In an embodiment, a key could be a string of length n selected from {A, B, C, D, E}^(n). In an embodiment, n=700 so that the key is a string of 700 symbols where each symbol is selected from {A, B, C, D, E}.

In some embodiments, a key is a collection of one or more values, that specifies how a particular encryption function will encrypt a message. For example, a key may be a sequence of 0's and 1's that are bitwise exclusive-or'ed with the bits that comprise a message to form the encrypted message.

In some embodiments, hidden data (key) 109 in FIG. 1A may be read as input by processor system 258, that executes instructions which perform a cryptographic algorithm. In some embodiments, hidden data (key) 132 in FIG. 1B, may be read as input by processor system 258, that executes instructions which perform a cryptographic algorithm. Symmetric cryptography typically is implemented with a block cipher or a stream cipher. In another embodiment, a key K may be a sequence of values that a stream cipher reads as input so that Alice can encrypt a message M as

(K, M) with this key and Bob can decrypt

(K, M) message. In the expression

(K, M), K represents the key, M represents the message and

represents the encryption method.

In another embodiment, a key may be a sequence of values that a block cipher reads as input in order to encrypt a message with the block cipher encryption algorithm

. In another embodiment, a key may be a sequence of values that a block cipher reads as input in order to decrypt an encrypted message with the block cipher's decryption algorithm

. If Eve does not know that key, then it is difficult for Eve to decrypt the encrypted message

(K, M). AES [13] is a common block cipher algorithm that reads 256-bit keys as input. Serpent [14] is also a block cipher algorithm that reads 256-bit keys as input.

In other embodiments, the key be a public key. In some embodiments, a key may refer to a public key for the RSA public-key algorithm [10]. In this case, a key is a huge prime number. In some embodiments, random generator 128 generates a key that is subsequently hidden by scatter map instructions 130.

FIG. 1A shows an information system 100 for hiding information in a manner that is expected to be secure. In this specification, data will sometimes refer to information that has not yet been hidden or encrypted. Information system 100 includes data 104 (not hidden information), and hiding process 106, a sending machine 102, hidden data (hidden information) 109 and a transmission path 110, a receiving machine 112, extraction process 116, extracted data 114. In other embodiments, information system 100 may not have all of the components listed above or may have other components instead of and/or in addition to those listed above.

Information system 100 may be a system for transmitting hidden data. Data 104 refers to information that has a purpose and that has not been hidden yet. In some embodiments, data is intended to be delivered to another location, software unit, machine, person, or other entity.

In some embodiments, data 104 is voice metadata that has not yet been hidden. Voice metadata may contain the IP address of the sending (calling) phone and also the IP address of the receiving phone. Voice metadata may contain the time of the call and the date. Some embodiments of a mobile phone are shown in FIG. 4. In other embodiments, data 104 is email metadata or text metadata or browser metadata.

In an embodiment, data may be unhidden information being transmitted wirelessly between satellites. Data may be represented in analog form in some embodiments and may be represented in digital form. In an embodiment, the sound waves transmitted from a speaker's mouth into a mobile phone microphone are data. The representation of this data information before reaching the microphone is in analog form. Subsequently, the data information may be digitally sampled so it is represented digitally after being received by the mobile phone microphone. In general, data herein refers to any kind of information that has not been hidden or encrypted and that has a purpose.

In information system 100, noise helps hide the data. It may be desirable to keep the contents of data 104 private or secret. Consequently, it may be desirable to hide data 104, so that the transmitted information is expected to be unintelligible to an unintended recipient should the unintended recipient attempt to read and/or extract the hidden data transmitted. Data 104 may be a collection of multiple, not yet hidden information blocks, an entire message of data, a segment of data (information), or any other portion of a data.

Hiding process 106 may be a series of steps that are performed on data 104. In one embodiment, the term “process” refers to one or more instructions for sending machine 102 to execute the series of operations that may be stored on a machine-readable medium. Alternatively, the process may be carried out by and therefore refer to hardware (e.g., logic circuits) or may be a combination of instructions stored on a machine-readable medium and hardware that cause the operations to be executed by sending machine 102 or receiving machine 112. Data 104 may be input for hiding process 106. The steps that are included in hiding process 106 may include one or more mathematical operations and/or one or more other operations.

As a post-processing step, one-way hash function 948 may be applied to a sequence of random events such as quantum events (non-deterministic) generated by non-deterministic generator 942 in FIG. 9A. As a post-processing step, one-way hash function 948 may be applied to a sequence of random events such as quantum events (non-deterministic) generated by non-deterministic generator 952 in FIG. 9B.

In FIG. 1B hiding process 122 may implement hiding process 106 in FIG. 1A. In some embodiments, cipher instructions 129 may first encrypt the data 124 and subsequently scatter map instructions 130 hide the encrypted data to produce hidden encrypted data 132 before sending machine 102 transmits the hidden data via transmission path 110. In some embodiments, data transformation instructions 126 may transform data 124 before scatter map process instructions 130 are applied to this transformed data. In some embodiments, scatter map process instructions 130 are at least part of the hiding process. In some embodiments, data 124 is transformed by data transformation instructions 126 and encrypted by cipher instructions 129 before scatter map process instructions 130 are applied to this transformed and encrypted data.

In some embodiments, as shown in FIG. 1B, random generator 128 is used to help generate the scatter map that helps perform scatter map process instructions 130. In some embodiments, random generator 128 generates noise that is used by scatter map process instructions 130 to hide data 124 that has previously been transformed by data transformation instructions 126 and/or encrypted by cipher instructions 129. In some embodiments, random generator 128 generates one or more keys as input to cipher instructions 129 that are applied to data 124. In some embodiments, random generator 128 generates one or more keys that are hidden in random noise, generated by random generator 128.

In some embodiments, hiding process 106 requests random generator 128 to help generate one or more keys (shown in cipher instructions 129) for encrypting at least part of data 104. In an embodiment, non-deterministic generator 942 (FIG. 9A) may be part of random generator 128. In an embodiment, non-deterministic generator 952 (FIG. 9B) may be part of random generator 128.

Sending machine 102 may be an information machine that handles information at or is associated with a first location, software unit, machine, person, sender, or other entity. Sending machine 102 may be a computer, a phone, a mobile phone, a telegraph, a satellite, or another type of electronic device, a mechanical device, or other kind of machine that sends information. Sending machine 102 may include one or more processors and/or may include specialized circuitry for handling information. Sending machine 102 may receive data 104 from another source (e.g., a transducer such as a microphone which is inside mobile phone 402 or 502 of FIG. 4), may produce all or part of data 104, may implement hiding process 106, and/or may transmit the output to another entity. In another embodiment, sending machine 102 receives data 104 from another source, while hiding process 106 and the delivery of the output of hiding process 106 are implemented manually. In another embodiment, sending machine 102 implements hiding process 106, having data 104 entered, via a keyboard (for example) or via a mobile phone microphone, into sending machine 102. In another embodiments, sending machine 102 receives output from hiding process 106 and sends the output to another entity.

Sending machine 102 may implement any of the hiding processes described in this specification. Hiding process 106 may include any of the hiding processes described in this specification. For example, hiding process 106 may implement any of the embodiments of the hiding processes 1 or 3, as described in section 7.7; hiding process 106 may implement any of the embodiments of the hiding process 5, as described in section 7.12; hiding process 106 may implement any of the embodiments of the hiding processes 6 or 7, as described in section 7.13; hiding process 106 may implement any of the embodiments of the hiding processes 8 or 9, as described in section 7.15. In some embodiments, hidden data 132, shown in FIG. 1B, includes at least some data 124 that was hidden by the scatter map process instructions 130 that is a part of hiding process 122.

Transmission path 110 is the path taken by hidden data 109 to reach the destination to which hidden data 109 was sent. Transmission path 110 may include one or more networks, as shown in FIG. 2A. In FIG. 2A, network 212 may help support transmission path 110. For example, transmission path 110 may be the Internet, which is implemented by network 212; for example, transmission path 110 may be wireless using voice over Internet protocol, which is implemented by network 212. Transmission path 110 may include any combination of any of a direct connection, hand delivery, vocal delivery, one or more Local Area Networks (LANs), one or more Wide Area Networks (WANs), one or more phone networks, including paths under the ground via fiber optics cables and/or one or more wireless networks, and/or wireless inside and/or outside the earth's atmosphere.

Receiving machine 112 may be an information machine that handles information at the destination of an hidden data 109. Receiving machine 112 may be a computer, a phone, a telegraph, a router, a satellite, or another type of electronic device, a mechanical device, or other kind of machine that receives information. Receiving machine 112 may include one or more processors and/or specialized circuitry conFIG.d for handling information, such as hidden data 109. Receiving machine 112 may receive hidden data 109 from another source and/or reconstitute (e.g., extract) all or part of hidden data 109. Receiving machine 112 may implement any of the hiding processes described in this specification and is capable of extracting any message hidden by sending machine 102 and hiding process 106.

In one embodiment, receiving machine 112 only receives hidden data 109 from transmission path 110, while hiding process 106 is implemented manually and/or by another information machine. In another embodiment, receiving machine 112 implements extraction process 116 that reproduces all or part of data 104, referred to as extracted data 114 in FIG. 1A. In another embodiment, receiving machine 112 receives hidden data 109 from transmission path 110, and reconstitutes all or part of extracted data 114 using extraction process 116. Extraction process 116 may store any of the processes of hiding information described in this specification. Extraction process 116 may include any of the hiding processes described in this specification

Receiving machine 112 may be identical to sending machine 102. For example, receiving machine 112 may receive data 104 from another source, produce all or part of data 104, and/or implement hiding process 106. Similar to sending machine 102, receiving machine 112 may create keys and random noise and random data. Receiving machine 112 may transmit the output of extraction process 116, via transmission path 110 to another entity and/or receive hidden data 109 (via transmission path 110) from another entity. Receiving machine 112 may present hidden data 109 for use as input to extraction process 116.

7.2 Public Key Information System

In this specification, the term “public key” refers to any kind of public key used in public key cryptography. In an embodiment, “public key” refers to an RSA public key. In an embodiment, “public key” refers to an elliptic curve public key. In an embodiment, “public key” refers to a lattice public key. In an embodiment, “public key” refers to a Goppa code public key.

In this specification, the term “public key” is a type of information and is a value or collection of values to which one or more operations are performed. In some embodiments, one or more of these operations are cryptographic operations. {0, 1}^(n) is the set of all bit-strings of length n. When a public key is represented with bits, mathematically a n-bit key is an element of the collection {0, 1}^(n) which is the collection of strings of 0's and 1's of length n. For example, the string of 0's and 1's that starts after this colon is a 128-bit key: 01100001 11000110 01010011 01110001 11000101 10001110 11011001 11010101 01011001 01100100 10110010 10101010 01101101 10000111 10101011 00010111. In an embodiment, n=3000 so that a key is a string of 3000 bits.

In other embodiments, a public key may be a sequence of values that are not represented as bits. Consider the set {A, B, C, D, E}. For example, the string that starts after this colon is a 40-symbol key selected from the set {A,B,C,D,E}: ACDEB AADBC EAEBB AAECB ADDCB BDCCE ACECB EACAE. In an embodiment, a key could be a string of length n selected from {A, B, C, D, E}^(n). In an embodiment, n=700 so that the key is a string of 700 symbols where each symbol is selected from {A, B, C, D, E}.

In some embodiments, hidden public key(s) 149 in FIG. 1C may be read as input by processor system 258 in FIG. 2B, that executes instructions which perform extraction process 156 in FIG. 1C. In some embodiments, hidden public key(s) 172 in FIG. 1D, may be read as input by processor system 258, that executes instructions which perform extraction process 156.

In some embodiments, public key(s) 144 are RSA public key(s), which is a well-known public key cryptography [10]. RSA is described from the perspective of Alice. Alice chooses two huge primes p_(A) and q_(A). Alice computes n_(A)=p_(A)q_(A) and a random number r_(A) which has no common factor with (p_(A)−1)(q_(A)−1). In other words, 1 is the greatest common divisor of r_(A) and (p_(A)−1)(q_(A)−1). The Euler-phi function is defined as follows. If k=1, then ϕ(k)=1; ifk>1, then ϕ(k) is the number positive integers i such that i<k and i and k are relatively prime. Relatively prime means the greatest common divisor of i and k is 1. The positive integer e_(A) is randomly selected such that e_(A) is relatively prime to ϕ(n_(A)).

Alice computes ϕ(n_(A))=n_(A)+1−p_(A)−q_(A). Alice computes the multiplicative inverse of r_(A) modulo (n_(A)); the multiplicative inverse is d_(A)=e_(A) ⁻¹ modulo ϕ(n_(A)). Alice makes public her public key (n_(A), r_(A)): that is, the two positive integers (n_(A), r_(A)) are Alice's public key.

In an embodiment, random generator 168 generates r₁ . . . r_(ρ) which is input to private key instructions 164. In an embodiment that hides RSA public keys, private key instruction 164 use r₁ . . . r_(ρ) to find two huge primes p_(A) and q_(A) and a random number r_(A) relatively prime to (p_(A)−1)(q_(A)−1).

In an embodiment, random generator 168 and private key instructions 164 generate two huge primes p_(A) and q_(A); compute n_(A)=p_(A)q_(A); and randomly choose e_(A) that is relatively prime to 99 (n_(A)). In an embodiment, private key instructions 164 compute d_(A)=e_(A) ⁻¹ modulo ϕ(n_(A)). In an embodiment, an RSA private key is (n_(A), d_(A)). In an embodiment that hides RSA public keys, public key instructions 166 compute RSA public key (n_(A), r_(A)). In an embodiment, positive integer n_(A) is a string of 4096 bits and r_(A) is a string of 4096 bits.

FIG. 1C shows an information system 140 for hiding public keys in a manner that is expected to be secure. In this specification, open public key will sometimes refer to a public key that has not yet been hidden and extracted public key will refer to a public key that was previously hidden and extracted from the noise. Information system 140 includes one or more private keys 103 and one or more corresponding public keys 144, and hiding process 146, a sending machine 142, hidden key(s) 149 and a transmission path 150, a receiving machine 152, extraction process 156, extracted public key(s) 154. In other embodiments, information system 140 may not have all of the components listed above or may have other components instead of and/or in addition to those listed above.

Information system 140 may be a system for transmitting hidden public key(s). Public key(s) 144 refers to information that has a purpose and that has not been hidden yet. In some embodiments, public key(s) 144 is intended to be delivered to another location, software unit, machine, person, or other entity.

In some embodiments, public key(s) 144 may serve as part of a key exchange that has not yet been hidden. In an embodiment, public key(s) 144 may be unhidden information before it is hidden and transmitted wirelessly between satellites. Public key(s) 144 may be represented in analog form in some embodiments and may be represented in digital form. In an embodiment, the public key(s) may be one or more RSA public keys based on huge prime numbers. In an another embodiment, the public key(s) may be one or more elliptic curve public keys, computed from an elliptic curve over a finite field.

In information system 140, noise helps hide public key(s) 144. Although they are public, it may be desirable to keep public key(s) 144 private or secret from Eve. For example, it is known that Shor's quantum computing algorithm [33] can compute in polynomial time the corresponding private key of a RSA public key. As another example, an analogue of Shor's algorithm [34] can compute in polynomial time the corresponding private key of an elliptic curve public key. If Eve has a quantum computer that computes enough qubits, then Eve could find the private key of an RSA public key that is disclosed to Eve and consequently breach the security of information system 140. One or more RSA public keys could be hidden in noise to protect them from Eve's quantum computer. Consequently, it may be desirable to hide public key(s) 144, so that the transmitted information is expected to be unintelligible to an unintended recipient should the unintended recipient attempt to read and/or extract the hidden public key(s) 149 transmitted. Public key(s) 144 may be a collection of multiple, not yet hidden blocks of information, an entire sequence of public keys, a segment of public keys, or any other portion of one or more public keys. When there is more than one public key, public keys 144 may be computed from distinct commutative groups, as described in section 7.16. For example, one commutative group may be based on an elliptic curve over a finite field; another commutative group may be based on multiplication modulo, as used in RSA.

Hiding process 146 may be a series of steps that are performed on public keys 144. In one embodiment, the term “process” refers to one or more instructions for sending machine 142 to execute the series of operations that may be stored on a machine-readable medium. Alternatively, the process may be carried out by and therefore refer to hardware (e.g., logic circuits) or may be a combination of instructions stored on a machine-readable medium and hardware that cause the operations to be executed by sending machine 142 or receiving machine 152. Public key(s) 144 may be input for hiding process 146. The steps that are included in hiding process 146 may include one or more mathematical operations and/or one or more other operations.

As a post-processing step, one-way hash function 948 may be applied to a sequence of random events such as quantum events (non-deterministic) generated by non-deterministic generator 942 in FIG. 9A. As a post-processing step, one-way hash function 948 may be applied to a sequence of random events such as quantum events (non-deterministic) generated by non-deterministic generator 952 in FIG. 9B.

In FIG. 1D hiding process 162 may implement hiding process 146 in FIG. 1C. In some embodiments, random generator 168 help generate noise that is used by scatter map instructions 170. In some embodiments, hiding process 162 requests random generator 168 and private key instructions 164 to help generate one or more private keys 103 that are used to compute public keys 144. In an embodiment, non-deterministic generator 942 (FIG. 9A) may be part of random generator 168. In an embodiment, non-deterministic generator 952 (FIG. 9B) may be part of random generator 168.

Sending machine 142 may be an information machine that handles information at or is associated with a first location, software unit, machine, person, sender, or other entity. Sending machine 142 may be a computer, a phone, a mobile phone, a telegraph, a satellite, or another type of electronic device, a mechanical device, or other kind of machine that sends information. Sending machine 142 may include one or more processors and/or may include specialized circuitry for handling information. Sending machine 142 may receive public key(s) 144 from another source (e.g., a transducer such as a microphone which is inside mobile phone 402 or 502 of FIG. 4), may produce all or part of public key(s) 144, may implement hiding process 146, and/or may transmit the output to another entity. In another embodiment, sending machine 142 receives public key(s) 144 from another source, while hiding process 146 and the delivery of the output of hiding process 146 are implemented manually. In another embodiment, sending machine 142 implements hiding process 146, having public key(s) 144 entered, via a keyboard (for example) or via a mobile phone microphone, into sending machine 142. In another embodiments, sending machine 142 receives output from hiding process 146 and sends the output to another entity.

Sending machine 142 may implement any of the hiding processes described in this specification. Hiding process 146 may include any of the hiding processes described in this specification. For example, hiding process 146 may implement any of the embodiments of the hiding processes 3 in section 7.7 and processes 10, 11 in section 7.17.

In some embodiments, hiding process 162, shown in FIG. 1D, generates one or more private keys p₁, . . . p_(m) from private key instructions 164 and random generator 168; computes one or more public keys k₁, . . . k_(m) with public key instructions 166; and scatter map instructions 170 hide one or public keys in noise r₁ . . . r_(ρ) generated from random generator 168.

Transmission path 150 is the path taken by hidden public key(s) 149 to reach the destination to which hidden public key(s) 149 was sent. Transmission path 150 may include one or more networks, as shown in FIG. 2A. In FIG. 2A, network 212 may help support transmission path 150. For example, transmission path 150 may be the Internet, which is implemented by network 212; for example, transmission path 150 may be wireless using voice over Internet protocol, which is implemented by network 212. Transmission path 150 may include any combination of any of a direct connection, hand delivery, vocal delivery, one or more Local Area Networks (LANs), one or more Wide Area Networks (WANs), one or more phone networks, including paths under the ground via fiber optics cables and/or one or more wireless networks, and/or wireless inside and/or outside the earth's atmosphere.

Receiving machine 152 may be an information machine that handles information at the destination of an hidden public key(s) 149. Receiving machine 152 may be a computer, a phone, a telegraph, a router, a satellite, or another type of electronic device, a mechanical device, or other kind of machine that receives information. Receiving machine 152 may include one or more processors and/or specialized circuitry conFIG.d for handling information, such as hidden public key(s) 149. Receiving machine 152 may receive hidden public key(s) 149 from another source and/or reconstitute (e.g., extract) all or part of hidden public key(s) 149. Receiving machine 152 may implement any of the hiding processes described in this specification and is capable of extracting any message hidden by sending machine 142 and hiding process 146.

In one embodiment, receiving machine 152 only receives hidden public key 149 from transmission path 150, while hiding process 146 is implemented manually and/or by another information machine. In another embodiment, receiving machine 152 implements extraction process 156 that reproduces all or part of public key(s) 144, referred to as extracted public key(s) 154 in FIG. 1C. In another embodiment, receiving machine 152 receives hidden public key(s) 149 from transmission path 150, and reconstitutes all or part of extracted public key(s) 154 using extraction process 156. Extraction process 156 may store any of the processes of hiding information described in this specification. Extraction process 156 may include any of the hiding processes described in this specification

Receiving machine 152 may be identical to sending machine 142. For example, receiving machine 152 may receive 144 from another source, produce all or part of public key(s) 144, and/or implement hiding process 146. Similar to sending machine 142, receiving machine 152 may create keys and random noise and random public key(s). Receiving machine 152 may transmit the output of extraction process 156, via transmission path 150 to another entity and/or receive hidden public key(s) 149 (via transmission path 150) from another entity. Receiving machine 152 may present hidden public key(s) 149 for use as input to extraction process 156.

7.3 Processor, Memory and Input/Output Hardware

Information system 200 illustrates some of the variations of the manners of implementing information system 100. Sending machine 202 is one embodiment of sending machine 101. Sending machine 202 may be a secure USB memory storage device as shown in 3A. Sending machine 202 may be an authentication token as shown in FIG. 3B. A mobile phone embodiment of sending machine 202 is shown in FIG. 4.

Sending machine 202 or sending machine 400 may communicate wirelessly with computer 204. In an embodiment, computer 204 may be a call station for receiving hidden data 109 from sending machine 400. A user may use input system 254 and output system 252 of sending machine (mobile phone) 400 to transmit hidden voice data or hidden metadata to a receiving machine that is a mobile phone. In an embodiment, input system 254 in FIG. 2B includes a microphone that is integrated with sending machine (mobile phone) 400. In an embodiment, output system 252 in FIG. 2B includes a speaker that is integrated with sending machine (mobile phone) 400. In another embodiment, sending machine 202 is capable of being plugged into and communicating with computer 204 or with other systems via computer 204.

Computer 204 is connected to system 210, and is connected, via network 212, to system 214, system 216, and system 218, which is connected to system 220. Network 212 may be any one or any combination of one or more Local Area Networks (LANs), Wide Area Networks (WANs), wireless networks, telephones networks, and/or other networks. System 218 may be directly connected to system 220 or connected via a LAN to system 220. Network 212 and system 214, 216, 218, and 220 may represent Internet servers or nodes that route hidden data (e.g., hidden voice data or hidden metadata) received from sending machine 400 shown in FIG. 4. In FIG. 2A, system 214, 216, 218, and system 220 and network 212 may together serve as a transmission path 110 for hidden data 109. In an embodiment, system 214, 216, 218, and system 220 and network 212 may execute the Internet protocol stack in order to serve as transmission path 110 for hidden data 109. In an embodiment, hidden data 109 may be voice data. In an embodiment, hidden data 109 may be routing data. In an embodiment, hidden data 109 may be TCP/IP data. In an embodiment, hidden data 109 may be metadata. In an embodiment, hidden data 109 may be email. In an embodiment, hidden data 109 may be text data sent from sending machine 400.

In FIG. 1B, hiding process 122 may be implemented by any of, a part of any of, or any combination of any of system 210, network 212, system 214, system 216, system 218, and/or system 220. As an example, routing information of transmission path 110 may be hidden with hiding process 122 that executes in system computer 210, network computers 212, system computer 214, system computer 216, system computer 218, and/or system computer 220. Hiding process 106 may be executed inside sending machine 400 and extraction process 116 may be executed inside receiving machine 400 in FIG. 4.

In an embodiment, hiding process 106 and extraction process 116 execute in a secure area of processor system 258 of FIG. 2B. In an embodiment, specialized hardware in processor system 258 may be implemented to speed up the computation of scatter map instructions 130 in FIG. 1B. In an embodiment, this specialized hardware in processor system 258 may be embodied as an ASIC (application specific integrated circuit) that computes SHA-1 and/or SHA-512 and/or Keccak and/or BLAKE and/or JH and/or Skein that help execute one-way hash function 948 in non-deterministic generator 942 or one-way hash function 958 in non-deterministic generator 952 or one-way hash instructions 964 in deterministic generator 962.

In an embodiment, specialized hardware in processor system 258 may be embodied as an ASIC (application specific integrated circuit) that computes SHA-1 and/or SHA-512 and/or Keccak and/or BLAKE and/or JH and/or Skein that help execute the HMAC function in process 6 named Hiding One or More Keys with Authentication or help execute process 7 named Hiding Encrypted Data Elements with Authentication. An ASIC chip can increase the execution speed and protect the privacy of hiding process 106 and extraction process 116.

In an embodiment, input system 254 of FIG. 2B receives voice data and sends the voice data to processor system 258 where the voice data or voice metadata is hidden. Output system 252 sends the hidden voice data 109 to a telecommunication network 212. In an embodiment, memory system 256 stores scatter map instructions 130, data transformation instructions 126, and cipher instructions 129.

In an embodiment, memory system 256 of FIG. 2B stores scatter map instructions 132. In an embodiment, memory system 256 stores hidden data or hidden metadata that is waiting to be sent to output system 252 and sent out along transmission path 110, routed and served by system computers 210, 214, 216, 218 and 220 and network 212.

7.4 One-Way Hash Functions

In FIG. 9A, 9B, 9C, or 9D, one-way hash function 948, 958, 964, or 984 may include one or more one-way functions. A one-way hash function Φ, has the property that given an output value z, it is computationally intractable to find an information element m_(z) such that Φ(m_(z))=z. In other words, a one-way function Φ is a function that can be easily computed, but that its inverse Φ⁻¹ is computationally intractable to compute [11]. A computation that takes 10¹⁰¹ computational steps is considered to have computational intractability of 10¹⁰¹.

More details are provided on computationally intractable. In an embodiment, there is an amount of time T that encrypted information must stay secret. If encrypted information has no economic value or strategic value after time T, then computationally intractable means that the number of computational steps required by all the world's computing power will take more time to compute than time T. Let C(t) denote all the world's computing power at the time t in years.

Consider an online bank transaction that encrypts the transaction details of that transaction. Then in most embodiments, the number of computational steps that can be computed by all the world's computers for the next 30 years is in many embodiments likely to be computationally intractable as that particular bank account is likely to no longer exist in 30 years or have a very different authentication interface.

To make the numbers more concrete, the 2013 Chinese supercomputer that broke the world's computational speed record computes about 33,000 trillion calculations per second [12]. If T=1 one year and we can assume that there are at most 1 billion of these supercomputers. (This can be inferred from economic considerations, based on a far too low 1 million dollar price for each supercomputer. Then these 1 billion supercomputers would cost 1,000 trillion dollars.). Thus, C(2014)×1 year is less than 109×33×1015×3600×24×365=1.04×10³³ computational steps.

As just discussed, in some embodiments and applications, computationally intractable may be measured in terms of how much the encrypted information is worth in economic value and what is the current cost of the computing power needed to decrypt that encrypted information. In other embodiments, economic computational intractability may be useless. For example, suppose a family wishes to keep their child's whereabouts unknown to violent kidnappers. Suppose T=100 years because it is about twice their expected lifetimes. Then 100 years×C(2064) is a better measure of computationally intractible for this application. In other words, for critical applications that are beyond an economic value, one should strive for a good estimate of the world's computing power.

One-way functions that exhibit completeness and a good avalanche effect or the strict avalanche criterion [13] are preferable embodiments: these properties are favorable for one-way hash functions. The definition of completeness and a good avalanche effect are quoted directly from [13]:

-   -   If a cryptographic transformation is complete, then each         ciphertext bit must depend on all of the plaintext bits. Thus,         if it were possible to find the simplest Boolean expression for         each ciphertext bit in terms of plaintext bits, each of those         expressions would have to contain all of the plaintext bits if         the function was complete. Alternatively, if there is at least         one pair of n-bit plaintext vectors X and X_(i) that differ only         in bit i, and ƒ(X) and ƒ(X_(i)) differ at least in bit j for all         {(i,j): 1≤i,j≤n}, the function ƒ must be complete.     -   For a given transformation to exhibit the avalanche effect, an         average of one half of the output bits should change whenever a         single input bit is complemented. In order to determine whether         a m×n (m input bits and n output bits) function ƒ satisfies this         requirement, the 2^(m) plaintext vectors must be divided into         2^(m-1) pairs, X and X_(j) such that X and X_(j) differ only in         bit i. Then the 2^(m-1) exclusive-or sums V_(i)=ƒ(X)⊕ƒ(X_(i))         must be calculated. These exclusive-or sums will be referred to         as avalanche vectors, each of which contains n bits, or         avalanche variables.

If this procedure is repeated for all i such that 1≤i≤m and one half of the avalanche variables are equal to 1 for each i, then the function ƒ has a good avalanche effect. Of course this method can be pursued only if m is fairly small; otherwise, the number of plaintext vectors becomes too large. If that is the case then the best that can be done is to take a random sample of plaintext vectors X, and for each value i calculate all avalanche vectors V_(i). If approximately one half the resulting avalanche variables are equal to 1 for values of i, then we can conclude that the function has a good avalanche effect.

A hash function, also denoted as Φ, is a function that accepts as its input argument an arbitrarily long string of bits (or bytes) and produces a fixed-size output of information. The information in the output is typically called a message digest or digital fingerprint. In other words, a hash function maps a variable length m of input information to a fixed-sized output, Φ(m), which is the message digest or information digest. Typical output sizes range from 160 to 512 bits, but can also be larger. An ideal hash function is a function Φ, whose output is uniformly distributed in the following way: Suppose the output size of Φ is n bits. If the message m is chosen randomly, then for each of the 2^(n) possible outputs z, the probability that Φ(m)=z is 2^(−n). In an embodiment, the hash functions that are used are one-way.

A good one-way hash function is also collision resistant. A collision occurs when two distinct information elements are mapped by the one-way hash function Φ to the same digest. Collision resistant means it is computationally intractable for an adversary to find collisions: more precisely, it is computationally intractable to find two distinct information elements m₁, m₂ where m₁≠m₂ and such that Φ(m₁)=Φ(m₂).

A number of one-way hash functions may be used to implement one-way hash function 148. In an embodiment, SHA-512 can implement one-way hash function 148, designed by the NSA and standardized by NIST [14]. The message digest size of SHA-512 is 512 bits. Other alternative hash functions are of the type that conform with the standard SHA-384, which produces a message digest size of 384 bits. SHA-1 has a message digest size of 160 bits. An embodiment of a one-way hash function 148 is Keccak [15]. An embodiment of a one-way hash function 148 is BLAKE [16]. An embodiment of a one-way hash function 148 is GrØstl [17]. An embodiment of a one-way hash function 148 is JH [18]. Another embodiment of a one-way hash function is Skein [19].

7.5 Non-Deterministic Generators

FIG. 9A shows an embodiment of a non-deterministic generator 942 arising from quantum events: that is, random noise generator uses the emission and absorption of photons for its non-determinism. In FIG. 9A, phototransistor 944 absorbs photons emitted from light emitting diode 954. In an embodiment, the photons are produced by a light emitting diode 946. In FIG. 9B, non-deterministic generator 952 has a photodiode 954 that absorbs photons emitted from light emitting diode 956. In an embodiment, the photons are produced by a light emitting diode 956.

FIG. 10 shows a light emitting diode (LED) 1002. In an embodiment, LED 1002 emits photons and is part of the non-deterministic generator 942 (FIG. 9A). In an embodiment, LED 1002 emits photons and is part of the non-deterministic generator 952 (FIG. 9B). LED 1002 contains a cathode, a diode, an anode, one terminal pin connected to the cathode and one terminal pin connected to the anode, a p-layer of semiconductor, an active region, an n-layer of semiconductor, a substrate and a transparent plastic case. The plastic case is transparent so that a photodetector outside the LED case can detect the arrival times of photons emitted by the LED. In an embodiment, photodiode 944 absorbs photons emitted by LED 1002. In an embodiment, phototransistor 954 absorbs photons emitted by LED 1002.

The emission times of the photons emitted by the LED experimentally obey the energy-time form of the Heisenberg uncertainty principle. The energy-time form of the Heisenberg uncertainty principle contributes to the non-determinism of random noise generator 142 because the photon emission times are unpredictable due to the uncertainty principle. In FIGS. 9A and 9B, the arrival of photons are indicated by a squiggly curve with an arrow and hν next to the curve. The detection of arrival times of photons is a non-deterministic process. Due to the uncertainty of photon emission, the arrival times of photons are quantum events.

In FIG. 9A and FIG. 9B, hν refers to the energy of a photon that arrives at photodiode 944, respectively, where h is Planck's constant and ν is the frequency of the photon. In FIG. 9A, the p and n semiconductor layers are a part of a phototransistor 944, which generates and amplifies electrical current, when the light that is absorbed by the phototransistor. In FIG. 9B, the p and n semiconductor layers are a part of a photodiode 954, which absorbs photons that strike the photodiode.

A photodiode is a semiconductor device that converts light (photons) into electrical current, which is called a photocurrent. The photocurrent is generated when photons are absorbed in the photodiode. Photodiodes are similar to standard semiconductor diodes except that they may be either exposed or packaged with a window or optical fiber connection to allow light (photons) to reach the sensitive part of the device. A photodiode may use a PIN junction or a p-n junction to generate electrical current from the absorption of photons. In some embodiments, the photodiode may be a phototransistor.

A phototransistor is a semiconductor device comprised of three electrodes that are part of a bipolar junction transistor. Light or ultraviolet light activates this bipolar junction transistor. Illumination of the base generates carriers which supply the base signal while the base electrode is left floating. The emitter junction constitutes a diode, and transistor action amplifies the incident light inducing a signal current.

When one or more photons with high enough energy strikes the photodiode, it creates an electron-hole pair. This phenomena is a type of photoelectric effect. If the absorption occurs in the junction's depletion region, or one diffusion length away from the depletion region, these carriers (electron-hole pair) are attracted from the PIN or p-n junction by the built-in electric field of the depletion region. The electric field causes holes to move toward the anode, and electrons to move toward the cathode; the movement of the holes and electrons creates a photocurrent. In some embodiments, the amount of photocurrent is an analog value, which can be digitized by a analog-to-digital converter. In some embodiments, the analog value is amplified before being digitized. The digitized value is what becomes the random noise. In some embodiments, a one-way hash function 948 or 958 may also be applied to post-process the random noise to produce the noise r₁ r₂ . . . r_(ρ) used by processes 1, 3, 5 6 and 7. In some embodiments, a one-way hash function may be applied to the random noise to produce key(s) k₁ k₂ . . . k_(m), used by processes 3 and 6.

In an embodiment, the sampling of the digitized photocurrent values may converted to threshold times as follows. A photocurrent threshold θ is selected as a sampling parameter. If a digitized photocurrent value i₁ is above θ at time t₁, then t₁ is recorded as a threshold time. If the next digitized photocurrent value i₂ above θ occurs at time t₂, then t₂ is recorded as the next threshold time. If the next digitized value i₃ above θ occurs at time t₃, then t₃ is recorded as the next threshold time.

After three consecutive threshold times are recorded, these three times can determine a bit value as follows. If t₂−t₁>t₃−t₂, then random noise generator produces a 1 bit. If t₂−t₁<t₃−t₂, then random noise generator produces a 0 bit. If t₂−t₁=t₃−t₂, then no noise information is produced. To generate the next bit, random noise generator 942 or 952 continues the same sampling steps as before and three new threshold times are produced and compared.

In an alternative sampling method, a sample mean u is established for the photocurrent, when it is illuminated with photons. In some embodiments, the sampling method is implemented as follows. Let i₁ be the photocurrent value sampled at the first sampling time. i₁ is compared to μ. ϵ is selected as a parameter in the sampling method that is much smaller number than μ. If i₁ is greater than μ+ϵ, then a 1 bit is produced by the random noise generator 942 or 952. If i₁ is less than μ−ϵ, then a 0 bit is produced by random noise generator 942 or 952. If i₁ is in the interval [μ−ϵ, μ+e], then NO bit is produced by random noise generator 942 or 952.

Let i₂ be the photocurrent value sampled at the next sampling time. i₂ is compared to μ. If i₂ is greater than μ+ϵ, then a 1 bit is produced by the random noise generator 942 or 952. If i₂ is less than μ−ϵ, then a 0 bit is produced by the random noise generator 942 or 952. If i₂ is in the interval [μ−ϵ, μ+ϵ], then NO bit is produced by the random noise generator 942 or 952. This alternative sampling method continues in the same way with photocurrent values i₃, i₄, and so on. In some embodiments, the parameter e is selected as zero instead of a small positive number relative to μ.

Some alternative hardware embodiments of non-deterministic generator 128 (FIG. 1B) are described below. In some embodiments that utilize non-determinism to produce random noise, a semitransparent mirror may be used. In some embodiments, the mirror contains quartz (glass). The photons that hit the mirror may take two or more paths in space. In one embodiment, if the photon is reflected, then the random noise generator creates the bit value b∈{0, 1}; if the photon is transmitted, then the random noise generator creates the other bit value 1−b. In another embodiment, the spin of an electron may be sampled to generate the next non-deterministic bit. In still another embodiment of a random noise generator, a protein, composed of amino acids, spanning a cell membrane or artificial membrane, that has two or more conformations can be used to detect non-determinism: the protein conformation sampled may be used to generate a random noise value in {0, . . . n−1} where the protein has n distinct conformations. In an alternative embodiment, one or more rhodopsin proteins could be used to detect the arrival times t₁<t₂<t₃ of photons and the differences of arrival times (t₂−t_(i)>t₃−t₂ versus t₂−t₁<t₃−t₂) could generate non-deterministic bits that produce random noise.

In some embodiments, the seek time of a hard drive can be used as random noise values as the air turbulence in the hard drive affects the seek time in a non-deterministic manner. In some embodiments, local atmospheric noise can be used as a source of random noise. For example, the air pressure, the humidity or the wind direction could be used. In other embodiments, the local sampling of smells based on particular molecules could also be used as a source of random noise.

In some embodiments, a Geiger counter may be used to sample non-determinism and generate random noise. In these embodiments, the unpredictability is due to radioactive decay rather than photon emission, arrivals and detection.

7.6 Deterministic Generators

In an embodiment, a deterministic generator 962 (FIG. 9C) is implemented with a machine. In an embodiment, machine 1 generates noise 972 as follows. 0 is one-way hash function with digest size d and is executed with one-way hash instructions 964. In some embodiments, Ψ is a one-way hash function with digest size at least ρ bits (noise size) and is executed with one-way hash instructions 968. In some embodiments, if ρ is greater than digest size of Ψ, then the generator update steps in machine 1 may be called more than once to generate enough noise.

In some embodiments, Φ and ψ, are the same one-way hash functions. In other embodiments, Φ and Ψ are different one-way hash functions. In an embodiment, Φ is one-way hash function SHA-512 and Ψ is one-way hash function Keccak. In another embodiment, Φ is one-way hash function Keccak and Ψ is one-way hash function SHA-512.

In an embodiment, the ith generator Δ(i) is composed of N bits and updated with generator update instructions 966. The N bits of Δ(i) are represented as Δ_(i,0) Δ_(i,1) . . . Δ_(i,N−1) where each bit Δ_(i,j) is a 0 or 1. In an embodiment, generator update instructions 966 are executed according to the following two steps described in machine 1:

Update (Δ_(i+1,0) Δ_(i+1,1) . . . Δ_(i+1,d−1))=Φ(Δ_(i,0) Δ_(i1) . . . Δ_(i,d−1)) Update Δ_(i+1,j)=Δ_(i,j) for each j satisfying d≤j≤N−1 In an embodiment, the size of the deterministic generator N may be 1024. In another embodiment, N may be fifty thousand. In another embodiment, N may be ten billion.

In an embodiment, one-way hash instructions 964 are performed by processor system 258 (FIG. 1B). In an embodiment, one-way hash instructions 968 are performed by processor system 258 (FIG. 1B). In an embodiment, generator update instructions 966 are performed by processor system 258 (FIG. 1B). In an embodiment, memory system 256 stores one-way hash instructions 964, one-way hash instructions 968 and generator update instructions 966.

In an embodiment, the instructions that execute machine 1 and help execute deterministic generator 962 may expressed in the C programming language before compilation. In an embodiment, the instructions that execute machine 1 and help execute deterministic generator 962 may be expressed in the native machine instructions of processor system 258. In an embodiment, the instructions that execute machine 1 may be implemented as an ASIC, which is part of processor system 258.

Machine 1. Generating Noise with a Machine 0th generator state Δ(0) = Δ_(0,0) ... Δ_(0,N−1). Initialize i = 0 while( hiding process 122 requests more noise ) {  Update (Δ_(i+1,0) Δ_(i+1,1) ... Δ_(i+1,d−1)) = Φ(Δ_(i,0) Δ_(i1) ... Δ_(i,d−1))  Update Δ_(i+1,j) = Δ_(i,j) for each j satisfying d ≤ j ≤ N − 1  Increment i  Generate noise 972 r₁r₂...r_(p) by executing one-way hash Ψ instructions  968 on  generator state Δ(i) as input to Ψ, where noise r₁r₂...r_(p) is the first p  bits of  hash output Ψ(Δ_(i,0)...Δ_(i,N−1)). }

In an embodiment, machine 2 generates key(s) 970 as follows. Φ is one-way hash function with digest size d and is executed with one-way hash instructions 964. In some embodiment, Ψ is a one-way hash function with digest size at least m bits (size of one or more keys) and is executed with one-way hash instructions 968. In some embodiments, if m is greater than digest size of Ψ, then the generator update steps in machine 2 may be called more than once to generate enough keys.

In some embodiments, Φ and Ψ are the same one-way hash functions. In other embodiments, Φ and Ψ are different one-way hash functions. In an embodiment, Φ is one-way hash function SHA-512 and Ψ is one-way hash function Keccak. In another embodiment, Φ is one-way hash function Keccak and Ψ is one-way hash function SHA-512.

In an embodiment, the ith generator Δ(i) is composed of N bits and updated with generator update instructions 966. The N bits of Δ(i) are represented as Δ_(i,0) Δ_(i,1) . . . Δ_(i,N−1) where each bit Δ_(i,j) is a 0 or 1. In an embodiment, generator update instructions 966 are executed according to the following two steps described in machine 2:

Update (Δ_(i+1,0) Δ_(i+1,1) . . . Δ_(i+1,d−1))=Φ(Δ_(i,0) Δ_(i,1) . . . Δ_(i,d−1)) Update Δ_(i+1,j)=Δ_(i,j) for each j satisfying d≤j≤N−1 In an embodiment, the size of the deterministic generator N may be 1024. In another embodiment, N may be fifty thousand. In another embodiment, N may be ten billion.

In an embodiment, one-way hash instructions 964 are performed by processor system 258 (FIG. 1B). In an embodiment, one-way hash instructions 968 are performed by processor system 258 (FIG. 1B). In an embodiment, generator update instructions 966 are performed by processor system 258 (FIG. 1B). In an embodiment, memory system 256 stores one-way hash instructions 964, one-way hash instructions 968 and generator update instructions 966.

In an embodiment, the instructions that execute machine 2 and help execute deterministic generator 962 may expressed in the C programming language before compilation. In an embodiment, the instructions that execute machine 2 and help execute deterministic generator 962 may be expressed in the native machine instructions of processor system 258. In an embodiment, the instructions that execute machine 2 may be implemented as an ASIC, which is part of processor system 258. In an embodiment, memory system 956 may store one or more keys 970.

Machine 2. Generating One or more Keys with a Machine 0th generator state Δ(0) = Δ_(0,0) ... Δ_(0,N−1). Initialize i = 0 while( hiding process 122 requests more key(s) ) {  Update generator (Δ_(i+1,0) Δ_(i+1,1) ... Δ_(i+1,d−1)) = Φ(Δ_(i,0) Δ_(i1) ... Δ_(i,d−1)).  Update generator Δ_(i+1,j) = Δ_(i,j) for each j satisfying d ≤ j ≤ N − 1  Increment i  Generate key(s) 970 k₁k₂...k_(m) by executing one-way hash Ψ  instructions 968 on  generator state Δ(i) as input to Ψ, where k₁ k₂...k_(m) is the first  m bits of  hash output Ψ(Δ_(i,0)...Δ_(i,N−1)). }

7.7 Scatter Map Hiding

A scatter map is a function that permutes data (information) to a sequence of distinct locations inside the random noise. To formally define a scatter map, the location space is defined first.

Definition 1

Let m,n∈

, where m≤n. The set

_(m,n)={(l₁, l₂ . . . l_(m))∈{1, 2, . . . n}^(m):l_(j)≠l_(k) whenever j≠k} is called an (m, n) location space.

Remark 1.

The location space

_(m,n) has

$\frac{n!}{\left( {n - m} \right)!}$

elements.

Definition 2

Given a location element (l₁, l₂ . . . l_(m))∈

_(m,n), the noise locations with respect to (l₁, l₂ . . . l_(m)) are denoted as

(l₁, l₂ . . . l_(m))={1, 2, . . . , n}−{l_(i):1≤i≤m}.

Definition 3

An (m, n) scatter map is an element π=(l₁, l₂ . . . l_(m))∈L_(m,n) such that π: {0, 1}^(m)×{0, 1}^(n-m)→{0, 1}^(n) and π(d₁, . . . , dm, r₁, r₂ . . . r_(n−m))=(s₁, . . . s_(n)) where the hiding locations s_(i) are selected as follows. Set s_(l) ₁ =d₁ s_(l) ₂ =d₂ . . . s_(l) _(m) =d_(m). For the noise locations, set s_(i) ₁ =r₁ for the smallest subscript i₁∈

(π). Set s_(i) _(k) =r_(k) for the kth smallest subscript i_(k) ∈

(π).

Definition 3 describes how the scatter map selects the hiding locations of the parts of the key or data hidden in the noise. Furthermore, the scatter map process stores the noise in the remaining locations that do not contain parts of the key or data. Before the scatter map process begins, it is assumed that an element π∈

_(m,n) is randomly selected with a uniform distribution and Alice and Bob already have secret scatter map π=(l₁, l₂ . . . l_(m)).

Hiding Process 1. Scatter Map Process Hides Data Before Transmitting

Alice retrieves data d₁ d₂ . . . d_(m). Alice generates noise r₁ r₂ . . . r_(ρ) with her random noise generator. Per definition 3, Alice uses scatter map π to store her data s_(l) ₁ =d₁ . . . s_(l) _(m) =d_(m). Per definition 3, Alice stores the noise in the noise (unoccupied) locations of

=(s₁ . . . s_(n)) so that the data d₁ d₂ . . . d_(m) is hidden in the noise. Alice sends

to Bob. Bob receives

. Bob uses scatter map π to extract data d₁ . . . d_(m) from

.

In an embodiment of process 1, scatter map π is executed by scatter map instructions 130 (FIG. 1B) and these instructions follow definition 3. In FIG. 2B, processor system 258 executes scatter map process instructions 130 during the step Alice uses scatter map π to store her data s_(l) ₁ =d₁ . . . s_(l) _(m) =d_(m). In an embodiment, scatter map process instructions 130 are stored in memory system 256 (FIG. 2B). In FIG. 2B, processor system 258 executes scatter map process instructions 130 during the step Alice stores the noise in the noise (unoccupied) locations of

=(s₁ . . . s_(n)) so that the data d₁ d₂ . . . d_(m) is hidden in the noise.

In an embodiment of process 1, output system 252 in FIG. 2B is used during the step Alice sends

to Bob. Output system 252 is part of sending machine 102 in FIG. 1A. In an embodiment of process 1, input system 254 in FIG. 2B is used during the step Bob receives

. Input system 254 is a part of receiving machine 112 in FIG. 1A.

In an alternative embodiment, Alice (first party) hides data inside noise so that she can protect its confidentiality and retrieve it at a later time. In an embodiment, hidden data 186 of FIG. 1E is stored on memory system that is served by the Internet cloud 212 of computers 210, 214, 216, 218, 220.

Hiding Process 2. Scatter Map Process Hides Data before Storing Alice retrieves data d₁ d₂ . . . d_(m). Alice generates noise r₁ r₂ . . . r_(ρ) with her random noise generator. Per definition 3, Alice uses scatter map π to store her data s_(l) ₁ , =d₁ . . . s_(l) _(m) =d_(m). Per definition 3, Alice stores the noise in the noise (unoccupied) locations of

=(s₁ . . . s_(n)) so that the data d₁ d₂ . . . d_(m) is hidden in the noise. Alice sends

to memory. system.

In hiding process 2, storing machine 180, as shown in FIG. 1E, executes hiding process 184 to hide data 182 and stores the hidden data 186 in memory system 188. In an embodiment, memory system 188 is implemented in hardware memory device 202 of FIG. 2A. Memory device 202 is also shown in FIG. 3A. In an embodiment, memory system 188 is part of mobile phone 400 in FIG. 400. In an embodiment, hidden data 186 is stored in memory system 188, which is implemented in the Internet cloud 212 of computers 210, 214, 216, 218, 220, as shown in FIG. 2A.

Hiding Process 3. Scatter Map Process Hides One or More Keys

Alice generates one or more keys k₁ k₂ . . . k_(m) with her random noise generator and random noise r₁ r₂ . . . r_(ρ). Per definition 3, Alice stores one or more keys s_(l) ₁ =k₁ . . . s_(l) _(m) =k_(m) using scatter map π. Per definition 3, Alice stores the noise r₁ r₂ . . . r_(ρ) in the noise (unoccupied) locations of

=(s₁ . . . s_(n)) so that the one or more keys k₁ k₂ . . . k_(m) are hidden in the noise. Alice sends

to Bob. Bob receives

. Bob uses scatter map π to extract one or more keys k₁ . . . k_(m) from

.

In an embodiment of process 3, scatter map π is executed by scatter map instructions 130 (FIG. 1B) and these instructions follow definition 3. In FIG. 2B, processor system 258 executes scatter map process instructions 130 during the step Alice stores one or more keys s_(l) ₁ =k_(l) . . . s_(l) _(m) =k_(m) using scatter map π. In an embodiment, scatter map process instructions 130 are stored in memory system 256 (FIG. 2B). In FIG. 2B, processor system 258 executes scatter map process instructions 130 during the step Alice stores the noise r₁ r₂ . . . r_(p) in the noise (unoccupied) locations of

=(s₁ . . . s_(n)) so that the one or more keys k₁ k₂ . . . k_(m) are hidden in the noise. In FIG. 2B, processor system 258 executes scatter map process instructions 130 during the step Bob uses scatter map π to extract one or more keys k_(l) . . . k_(m) from

.

In an embodiment of process 3, output system 252 is used during the step Alice sends

to Bob. Output system 252 is part of sending machine 102 in FIG. 1A. In an embodiment of process 3, input system 254 is used during the step Bob receives S. Input system 254 is a part of receiving machine 112 in FIG. 1A.

When the scatter size is n, process 1 takes n steps to hide the data inside the noise. When the scatter size is n, process 3 takes n steps to hide one or more keys inside the noise. When the bit-rate of a random noise generator is x bits per second, then a transmission with scatter size x bits is practical. When x=10,000, a key size of 2000 bits and noise size of 8000 bits is feasible. When x=20,000, a data size of 5000 bits and noise size of 1500 bits is feasible. In some applications, Alice and Bob may also establish the key size or data size m as a shared secret, where m is not disclosed to Eve.

In the interests of being conservative about the security, the mathematical analysis in section 7.11 assumes that Eve knows the data or key size m. For applications where Eve doesn't know m, the security will be stronger than the results obtained in the upcoming sections.

7.8 Multiple Hidings of Data Transmissions or Data Storings

This section analyzes the mathematics of when a scatter map is safest to reuse for multiple, hidings of data transmissions or hidings of data stored. Suppose that scatter map π∈

_(m,n) is established with Alice and Bob, according to a uniform probability distribution and adversary Eve has no information about π. Before Eve sees Alice's first scatter storage or first scatter transmission from Alice to Bob, from Eve's perspective, the probability

${P\left( {\pi = \left( {l_{1},{l_{2}\mspace{14mu} \ldots \mspace{14mu} l_{m}}} \right)} \right)} = \frac{\left( {n - m} \right)!}{n!}$

for each (l₁, l₂ . . . l_(m)) in

_(m,n): in other words, Eve has zero information about π with respect to

_(m,n). Rule 1. The Noise and Data have the Same Bias

The noise and data satisfy the same bias property if the probability distribution of the noise and and the probability distribution of the data are the same. In an embodiment, the noise is generated by non-deterministic generator 942 and has two outcomes (binary) and each outcome has probability ½; and each indivisible unit of the data has two outcomes and each outcome has probability ½.

In another embodiment the noise is generated by deterministic generator 962 and has two outcomes (binary) and the first outcome has probability 1/10 and the second outcome has probability 9/10; and each indivisible unit of the data has two outcomes and the first outcome for a data unit has probability 1/10 and the second outcome has probability 9/10.

In another embodiment the noise is generated by deterministic generator 962 and has three outcomes: the first outcome has probability 1/100; the second outcome has probability 29/100; and the third outcome has probability 70/100. And the primitive units of data have three outcomes: the first outcome has probability 1/100; the second outcome has probability 29/100; and the third outcome has probability 70/100.

Our next rule describes that prior history of outcomes has no influence on which outcome occurs next. In probability theory, this is sometimes called stochastic independence.

Rule 2. Stochastic Independence

History has no effect on the next event. Each outcome o_(i) is independent of the history. Let p_(i) be the probability of outcome o_(i) where there are m outcomes. A standard assumption of probability theory is that the sum of the probabilities of a finite number of mutually exclusive outcomes is 1 when these outcomes cover all possible outcomes. That is,

${\sum\limits_{i = 1}^{m}\; p_{i}} = 1.$

Stochastic independence means that no correlation exists between previous or future outcomes. If the history of the prior j−1 outcomes is b₁, b₂, . . . , b_(j-1), then the conditional probability of outcome o_(i) on the jth trial is still p_(i), regardless of this history. This is expressed in terms of the conditional probabilities: for every outcome o_(i), P(x_(j)=o_(i)|x₁=b₁, . . . , x_(j-1)=b_(j-1))=p_(i).

Process 4 shows how to generate biased noise that is unpredictable so that unencrypted data with a bias can still be effectively hidden. In hiding process 4, a line starting with ;; is a comment.

Hiding Process 4. A Biased Noise Generator ;; The noise outcomes in  

 are indexed as {o₁, o₂, . . . , o_(m)}, when there are m outcomes. ;; p_(i) is the probability of noise outcome o_(i). ;; The interval [0, 1) is subdivided into subintervals with rational endpoints. set i = 1 set x = 0 while (i ≤ m) {  set L_(i) = [x, x + p_(i))  increment i  update x to x + p_(i) } set δ = ½ min{p₁, p₂, . . . , p_(m)} compute n > 0 so that 2^(−n) < δ use an unbiased, binary non-deterministic generator to sample n bits b₁, b₂, . . . , b_(n) set $x = {\sum\limits_{i = 1}^{n}\; {b_{i}\mspace{11mu} 2^{- i}}}$ Generate noise outcome o_(j) such that x lies in interval L_(j)

In an embodiment, hiding process 4 can be implemented as a computing system (FIG. 2B) with input system 242, output system 240, memory system 246, and processor system 252, using non-deterministic generator 942 or non-deterministic generator 952. In an embodiment, hiding process 4 can be used to help implement random noise generator 128 in FIG. 1B. In an embodiment, hiding process 4 can be used to generate biased noise 990 in FIG. 9D. In an embodiment, the unbiased, binary non-deterministic generator in hiding process 4 is implemented with non-deterministic generator 942 of FIG. 9A or non-deterministic generator 952 of FIG. 9B.

Next, two more rules are stated whose purpose is to design embodiments that do not lead leak information to Eve. Section 7.13 shows some embodiments that authenticate the data or key(s) hidden in the noise. Embodiments that follow these rules help hinder Eve from actively sabotaging Alice and Bob to violate these rules.

Rule 3. New Noise and New Data

For each scattered transmission, described in process 1 or process 3, Alice creates new data d₁ . . . d_(m) or creates a new key k₁ . . . k_(m). Alice also creates new noise r₁ . . . r_(n−m) from a non-deterministic generator that satisfies rule 1 (The Noise and Data have the Same Bias) and rule 2 (Stochastic Independence).

Rule 4. No Auxiliary Information

During the kth scattered transmission or storage, Eve only sees scattered

(k); Eve receives no auxiliary information from Alice or Bob. Scattered

(k) represents the key(s) or data hidden in the noise.

Theorem 1.

When Eve initially has zero information about π w.r.t.

_(m,n), and rules 3 and 4 hold, then Eve still has zero information about π after she observes scattered transmissions

(1),

(2), . . .

(k).

In a proof of theorem 1, the following terminology is used. i lies in π=(l₁, l₂ . . . l_(m)) if i=l_(j) for some 1≤j≤m. Similarly, i lies outside π if i≠l_(j) for every 1≤j≤m. In this latter case, i is a noise location.

PROOF. Consider the ith bit location in the scattered transmission. Let x_(i)(k) denote the ith bit observed by Eve during the kth scattered transmission

(k). The scatter map π is established before the first transmission based on a uniform probability distribution; rule 3 implies the data generation and noise generation obey the two properties of no bias and history has no effect, These rules imply the conditional probabilities P(x_(i)(k+1)=1| x_(i)(k)=b)=½=P(x_(i)(k+1)=0|x_(i)(k)=b) hold for b∈{0, 1}, independent of whether i lies in π or i lies outside π. Rule 4 implies that if Eve's observation of

(1),

(2), . . .

(k) enabled her to obtain some information, better than

${{P\left( {\pi = \left( {l_{1},{l_{2}\mspace{14mu} \ldots \mspace{14mu} l_{m}}} \right)} \right)} = \frac{\left( {n - m} \right)!}{n!}},$

about whether i lies in π or i lies outside π, then this would imply that the probability distribution of the noise is distinct from the probability distribution of the data, which is a contradiction.

Remark 2.

Theorem 1 is not precisely true if the probability distribution of the noise is distinct from the probability distribution of the data. In some embodiments, the probability distribution of the noise may be close enough to the probability distribution of the data so that Eve cannot obtain enough information to guess or figure out hiding locations. With this in mind, for a positive ϵ>0 and ϵ<½, we define what it means for the probability distribution of the noise to be e-close to the probability distribution of the data.

Definition 4. Probability Distributions that are e-Close

Suppose the noise outcomes and the data outcomes are binary. That is, each noise outcome can be represented with a bit and each data outcome can be represented with a bit. Let (p₀,p₁) be the noise distribution. This means that the probability of a noise bit being a 0 is p₀ and probability of a noise bit being 1 is p₁, so p₀+p₁=1. Let (q₀, q₁) be the data distribution. This means that the probability of a data bit being a 0 is q₀ and probability of a data bit being 1 is q_(l). The probability distribution of the noise is ϵ-close to the probability distribution of the data if |p₀−q₀|<ϵ and |p₁−q₁|<ϵ.

Suppose the noise has m distinct outcomes and the data has m distinct outcomes. Let (p₁, p₂, . . . , p_(m)) be the probability distribution of the noise, where

${\sum\limits_{i = 1}^{m}\; p_{i}} = 1.$

Let (q₁, q₂, . . . , q_(m)) be the probability distribution of the data, where

${\sum\limits_{i = 1}^{m}\; q_{i}} = 1.$

The probability distribution of the noise is ϵ-close to the probability distribution of the data if |p_(i)−q_(i)<ϵ for every i such that 1≤i≤m.

In embodiments, remark 2 advises us not to let Alice violate rule 3: an example of what Alice should not do is send the same data or same key in multiple executions of process 1 or process 3 and the noise is randomly generated for each execution.

7.9 Effective Hiding

This section provides the intuition for effective hiding. Effective hiding occurs when Eve obtains no additional information about scatter map a after Eve observes multiple hidden key or hidden data transmissions. Section 7.8 provides mathematical analysis of this intuition.

The effectiveness of the hiding depends upon the following observation. Even after Eve executes a search algorithm for the data (signal) in the noise, Eve's search algorithm does NOT know when it has found the key or the data because her search algorithm CANNOT distinguish the signal from the noise. This is illustrated by FIG. 5 and FIG. 6.

The pixel values in FIG. 5 and FIG. 6 that compose the secret are hidden in the noise of the visual image such that the probabilities of the pixel values satisfy the two randomness axioms. Suppose Eve performs a brute force search over all

$\frac{n!}{\left( {n - m} \right)!}$

possibilities for scatter map σ. Even if Eve's search method stumbles upon the correct sequence of locations, Eve's method has no basis for distinguishing the data from the noise because the key and noise probability distributions are equal. For FIG. 5, Eve does not have a terminating condition for halting with this sequence of bit locations hiding the key. For FIG. 6, Eve does not have a terminating condition for halting with this sequence of locations hiding the data.

In FIG. 7 and FIG. 8, Eve can obtain some locations of the hidden data or hidden key because the probability distribution of the secret (foreground) is not the same as the noise (background): Eve can determine the secret is located in a P shape, because the probability distribution of these secret pixels violates the randomness axioms.

7.10 Dynamic Hiding Locations

This section describes a further enhancement of our invention(s) and makes Eve's challenge far more difficult for her to capture or estimate the scatter map: the locations of where to hide the information, or data, or keys, or public keys can dynamically change. This means the scatter map dynamically changes in a way so that Alice can extract the hidden information at a later time even though each block of data units are hidden at different locations. In terms of mathematics, the scatter map π(k) dynamically changes as a function of the kth storing or kth transmission. Precisely, π(j)≠π(k) when j≠k.

In an embodiment, Alice hides information in blocks of 4 data (information) units and the noise size is 60 data (information) units. In some embodiments a unit may represent a bit: there are two choices for each d_(i). In other embodiments, there may be 4 choices for each unit d_(i). In the first hiding of the data or information in the noise, Alice hides data unit d₀ at location 63; Alice hides data unit d₁ at location 2; Alice hides data unit d₂ at location 17; and Alice hides data unit d₃ at location 38. As described in section, Alice stores the noise units in the remaining 60 locations.

In the second hiding of 4 data units d₄, d₅, d₆, and d₇, Alice hides data unit d₄ at location 28; Alice hides data unit d₅ at location 51; Alice hides data unit d₆ at location 46; and Alice hides data unit d₇ at location 12. The hiding locations in the first hiding are different from the hiding location in the second hiding. In other words, the enhancement described in machine 3 provides dynamic hiding locations.

Described below, machine 3 describes an embodiment of hiding locator machine 980 of FIG. 9D, that generates unpredictable hiding locations so that even if Eve knows scatter maps π(1), π(2), . . . , and all the way up to π(k−1), Eve will not be able to guess or effectively predict scatter map π(k).

Machine 3. Dynamic Hiding Locations 0th hiding locator Δ(0) = Δ_(0,0) ... Δ_(0,N−1). Initialize i = 0 while( hiding process 122 requests more location(s) ) {  Update hiding locator (Δ_(i+1,0) Δ_(i+1,1) ... Δ_(i+1,d−1)) = Φ(Δ_(i,0) Δ_(i1) ... Δ_(i,d−1)).  Update hiding locator Δ_(i+1,j) = Δ_(i,j) for each j satisfying d ≤ j ≤ N − 1  Increment i  Generate scatter map locations l₁, l₂, ..., l_(m) by executing one-way  hash Ψ  instructions 968 on hiding locator Δ(i) as input to Ψ, where l₁ l₂...l_(m)  is the first b m bits of hash output Ψ(Δ_(i,0)...Δ_(i,N−1)). } In a machine 3 embodiment of hiding locator machine 980, N=1024 is the size of the hiding locator Δ(i), and Δ(i) is updated by hiding locator update instructions 986. In another embodiment, N is fifty thousand. In another embodiment, N is ten billion.

In a machine 3 embodiment, b=32. Since 232 is greater than 4 billion, there are more than 4 billion possible hiding locations for a single hiding of data when b=32. In a machine 3 embodiment, b=64. Since 264 is greater than 1019, there are more than 1019 possible hiding locations for a single hiding of data when b=64. In a machine 3 embodiment, b=5000.

In a machine 3 embodiment of hiding locator machine 980, one-way hash instructions 984 are performed by processor system 258 (FIG. 1B). In an embodiment, one-way hash instructions 968 are performed by processor system 258 (FIG. 1B). In an embodiment, hiding locator update instructions 986 are performed by processor system 258 (FIG. 1B). In an embodiment, memory system 256 stores one-way hash instructions 964, one-way hash instructions 968 and hiding locator update instructions 986.

In an embodiment, the instructions that execute machine 3 and help execute hiding locator machine 980 may expressed in the C programming language before compilation. In an embodiment, the instructions that execute machine 3 and help execute hiding locator machine 980 may be expressed in the native machine instructions of processor system 258. In an embodiment, the instructions that execute machine 3 may be implemented as an ASIC, which is part of processor system 258. In an embodiment, memory system 956 may store one or more dynamic hiding locations 982.

7.11 Single Storage and Transmission Analysis

The size of the location space is significantly greater than the data or key size. Even for values of n as small as 30,

$\frac{n!}{\left( {n - m} \right)!}\operatorname{>>}{2^{m}.}$

The uniform distribution of the noise and the data generation and a large enough noise size poses Eve with the challenge that even after seeing the transmission

=(s₁ . . . s_(n)), she has almost no more information about the data or key(s), than before the creation of k₁ k₂ . . . k_(m). The forthcoming analysis will make this notion of almost no more information more precise.

In some applications, Alice and Bob may also establish the data size m as a shared secret, where m is not disclosed to Eve. In the interests of being conservative about the security, it is assumed that Eve knows the data size m. For applications where Eve doesn't know m, the information security will be stronger than the results obtained in this section.

Processes 1 and 3 are analyzed with counting and asymptotic results that arise from the binomial distribution. First, some preliminary definitions are established.

For 0≤i≤n, define E_(i,n)={r∈{0,1}^(n): η₁(r)=i}. When n=4, E_(0,4)={0000}, E_(1,4)={0001, 0010, 0100, 1000}, E_(2,4)={0011,0101,0110, 1001,1010, 1100}, E_(3,4)={0111, 1011,1101, 1110} and E_(4,4)={1111}. Note

${E_{k,n}} = {\frac{n!}{{\left( {n - k} \right)!}{k!}} = {\begin{pmatrix} n \\ k \end{pmatrix}.}}$

The expression—the ith element of E_(k,n)—refers to ordering the set E_(k,n) according to an increasing sequence of natural numbers that each binary string represents and selecting the ith element of this ordering. For example, the 3rd element of E_(2,4) is 0110.

In FIG. 13, event B_(i,j) refers to the ith data in E_(j,m). Event R_(i) refers to the set of random noise elements which have i ones, and the noise size is ρ=n−m. Event A_(i) refers to a scatter (s₁ . . . s_(n)) which contains i ones.

Equation 7.1 follows from the independence of events R_(k) and B_(l,j).

P(R _(k) ∩B _(l,j))=P(R _(k))∩P(B _(l,j))  (7.1)

whenever 0≤k≤ρ and 0≤j≤m and

$1 \leq l \leq {\begin{pmatrix} m \\ j \end{pmatrix}.}$

Equation 7.2 follows from the definitions in FIG. 13 η₁(s₁ . . . s_(n))=η₁(r₁ . . . r_(ρ))+η₁(k_(l) . . . k_(m)); and the meaning of conditional probability.

$\begin{matrix} {{P\left( A_{k} \middle| B_{l,j} \right)} = {{P\left( R_{k - j} \right)} = {\begin{pmatrix} \rho \\ {k - j} \end{pmatrix}2^{- \rho}}}} & (7.2) \end{matrix}$

whenever 0≤j≤min{k,m} and

$1 \leq l \leq {\begin{pmatrix} m \\ j \end{pmatrix}.}$

A finite sample space and

${P\left( {\bigcup\limits_{j = 0}^{m}{\bigcup\limits_{l = 1}^{E_{j,m}}B_{l,j}}} \right)} = 1$

imply that each even

$A_{k} \Subset {\bigcup\limits_{j = 0}^{m}{\bigcup\limits_{l = 1}^{E_{j,m}}{B_{l,j}.}}}$

Furthermore, B_(l) ₁ _(,j) ₁ ∩B_(l) ₂ _(,j) ₂ =Ø whenever l₁≠l₂ or j₁≠j₂ such that 0≤j₁, j₂≤m and 1≤l₁≤E_(j) ₁ _(,m) and 1≤l₂≤E_(j) ₂ _(,m). Thus, Bayes Law is applicable. Equation 7.3 follows from Bayes Law and the derivation below 7.3.

$\begin{matrix} {{P\left( B_{l,j} \middle| A_{k} \right)} = \frac{\begin{pmatrix} \rho \\ {k - j} \end{pmatrix}}{\sum\limits_{b = 0}^{\min {\{{k,m}\}}}\; {\begin{pmatrix} m \\ b \end{pmatrix}\begin{pmatrix} \rho \\ {k - b} \end{pmatrix}}}} & (7.3) \end{matrix}$

whenever 0≤j≤min{k, m} and

$1 \leq l \leq {\begin{pmatrix} m \\ j \end{pmatrix}.}$

The mathematical steps that establish equation 7.3 are shown below.

$\begin{matrix} {{P\left( B_{l,j} \middle| A_{k} \right)} = \frac{{P\left( B_{l,j} \right)}{P\left( A_{k} \middle| B_{l,j} \right)}}{\sum\limits_{b = 0}^{\min {\{{k,m}\}}}\; {\sum\limits_{a = 1}^{E_{b,m}}\; {{P\left( B_{a,b} \right)}{P\left( A_{k} \middle| B_{a,b} \right)}}}}} \\ {= \frac{P\left( A_{k} \middle| B_{l,j} \right)}{\sum\limits_{b = 0}^{\min {\{{k,m}\}}}\; {\sum\limits_{a = 1}^{E_{b,m}}\; {P\left( A_{k} \middle| B_{a,b} \right)}}}} \\ {= {\frac{\begin{pmatrix} \rho \\ {k - j} \end{pmatrix}2^{- \rho}}{\sum\limits_{b = 0}^{\min {\{{k,m}\}}}\; {{E_{b,m}}\begin{pmatrix} \rho \\ {k - b} \end{pmatrix}2^{- \rho}}}.}} \end{matrix}$

Definition 5

Let c be a positive integer. ƒ:

→

is called a binomial c-standard deviations function if there exists N∈

such that whenever ρ≥N, then

${{{f(\rho)} - \frac{\rho}{2}}} \leq {c\frac{\sqrt{\rho}}{2}}$

Define the function

${h_{c}(\rho)} = {\max {\left\{ {0,{\frac{\rho}{2} - \left\lfloor {c\frac{\sqrt{\rho}}{2}} \right\rfloor}} \right\}.}}$

Then h_(c) is a binomial c-standard deviations function. Lemmas 2 and 3 may be part of the binomial distribution folklore; for the sake of completeness, they are proven below.

Lemma 2.

Let k:

→

be a binomial c-standard deviations function. Then

${\lim\limits_{\rho\rightarrow\infty}\frac{\begin{pmatrix} \rho \\ {{k(\rho)} - 1} \end{pmatrix}}{\begin{pmatrix} \rho \\ {k(\rho)} \end{pmatrix}}} = 1.$

PROOF. A simple calculation shows that

$\frac{\begin{pmatrix} \rho \\ {{k(\rho)} - 1} \end{pmatrix}}{\begin{pmatrix} \rho \\ {k(\rho)} \end{pmatrix}} = {\frac{k(\rho)}{\rho - {k(\rho)} + 1}.}$

Since k(ρ) is a binomial c-standard deviations function,

${\frac{\rho}{2} - \frac{c\sqrt{\rho}}{2}} \leq {k(\rho)} \leq {\frac{\rho}{2} + {\frac{c\sqrt{\rho}}{2}.}}$

This implies

${\frac{\rho}{2} + \frac{c\sqrt{\rho}}{2} + 1} \geq {\rho - {k(\rho)} + 1} \geq {\frac{\rho}{2} - {\frac{c\sqrt{\rho}}{2}.}}$

Thus,

$\begin{matrix} {\frac{\frac{\rho}{2} - \frac{c\sqrt{\rho}}{2}}{\frac{\rho}{2} + \frac{c\sqrt{\rho}}{2} + 1} \leq \frac{\begin{pmatrix} \rho \\ {{k(\rho)} - 1} \end{pmatrix}}{\begin{pmatrix} \rho \\ {k(\rho)} \end{pmatrix}} \leq \frac{\frac{\rho}{2} + \frac{c\sqrt{\rho}}{2}}{\frac{\rho}{2} - \frac{c\sqrt{\rho}}{2}}} & (7.4) \end{matrix}$

Since

${{\lim\limits_{\rho\rightarrow\infty}\frac{\frac{\rho}{2} - \frac{c\sqrt{\rho}}{2}}{\frac{\rho}{2} + \frac{c\sqrt{\rho}}{2} + 1}} = {1 = {\lim\limits_{\rho\rightarrow\infty}\frac{\frac{\rho}{2} + \frac{c\sqrt{\rho}}{2}}{\frac{\rho}{2} - \frac{c\sqrt{\rho}}{2}}}}},$

apply the squeeze theorem to equation 7.4.

The work from lemma 2 helps prove lemma 3. Lemma 3 helps prove that equation 7.3 converges to 2^(−m) when k(ρ) is a binomial c-standard deviations function.

Lemma 3.

Fix m∈N. Let k:

→

be a binomial c-standard deviations function. For any b, j such that 0≤b, j≤m, then

${\lim\limits_{\rho\rightarrow\infty}\frac{\begin{pmatrix} \rho \\ {{k(\rho)} - j} \end{pmatrix}}{\begin{pmatrix} \rho \\ {{k(\rho)} - b} \end{pmatrix}}} = 1.$

PROOF. Using a similar computation to equation 7.4 inside of c+1 standard deviations instead of c, then ρ can be made large enough so that k(ρ)−b and k(ρ)−j lie within c+1 standard deviations so that

${\lim\limits_{\rho\rightarrow\infty}\frac{\begin{pmatrix} \rho \\ {{k(\rho)} - i - 1} \end{pmatrix}}{\begin{pmatrix} \rho \\ {{k(\rho)} - i} \end{pmatrix}}} = 1$

where 0≤i≤m. W.L.O.G., suppose j<b. Thus,

${\lim\limits_{\rho\rightarrow\infty}\frac{\begin{pmatrix} \rho \\ {{k(\rho)} - j} \end{pmatrix}}{\begin{pmatrix} \rho \\ {{k(\rho)} - b} \end{pmatrix}}} = {{\lim\limits_{\rho\rightarrow\infty}{\frac{\begin{pmatrix} \rho \\ {{k(\rho)} - j} \end{pmatrix}}{\begin{pmatrix} \rho \\ {{k(\rho)} - \left( {j + 1} \right)} \end{pmatrix}}{\lim\limits_{\rho\rightarrow\infty}{\frac{\begin{pmatrix} \rho \\ {{k(\rho)} - \left( {j + 1} \right)} \end{pmatrix}}{\begin{pmatrix} \rho \\ {{k(\rho)} - \left( {j + 2} \right)} \end{pmatrix}}\mspace{14mu} \ldots \mspace{14mu} {\lim\limits_{\rho\rightarrow\infty}\frac{\begin{pmatrix} \rho \\ {{k(\rho)} - \left( {b - 1} \right)} \end{pmatrix}}{\begin{pmatrix} \rho \\ {{k(\rho)} - b} \end{pmatrix}}}}}}} = 1}$      •

Theorem 4.

Fix data size m∈

. Let c∈

. Let k:

→

be a binomial c-standard deviations function. Then

${\lim\limits_{\rho\rightarrow\infty}{P\left( B_{l,j} \middle| A_{k{(\rho)}} \right)}} = {2^{- m}.}$

PROOF.

$\begin{matrix} {{\lim\limits_{\rho\rightarrow\infty}{P\left( B_{l,j} \middle| A_{k{(\rho)}} \right)}} = {\lim\limits_{\rho\rightarrow\infty}\left\lbrack \frac{\sum\limits_{b = 0}^{\min {\{{{k{(\rho)}},m}\}}}\; {\begin{pmatrix} m \\ b \end{pmatrix}\begin{pmatrix} \rho \\ {{k(\rho)} - b} \end{pmatrix}}}{\begin{pmatrix} \rho \\ {{k(\rho)} - j} \end{pmatrix}} \right\rbrack^{- 1}}} \\ {= \left\lbrack {\sum\limits_{b = 0}^{m}\; {\begin{pmatrix} m \\ b \end{pmatrix}\mspace{14mu} {\lim\limits_{\rho\rightarrow\infty}\mspace{11mu} \frac{\begin{pmatrix} \rho \\ {{k(\rho)} - b} \end{pmatrix}}{\begin{pmatrix} \rho \\ {{k(\rho)} - j} \end{pmatrix}}}}} \right\rbrack^{- 1}} \\ {= 2^{- m}} \end{matrix}$ from  equation  7.3.since  m  is  fixed  and  ρ → ∞  implies  k(ρ) > m.from  lemma  2.  •

Remark 3.

Theorem 4 is not true when k(ρ) stays on or near the boundary of Pascal's triangle. Consider

${\lim\limits_{\rho\rightarrow\infty}\frac{\begin{pmatrix} \rho \\ 0 \end{pmatrix}}{\begin{pmatrix} \rho \\ 1 \end{pmatrix}}} = {{0\mspace{14mu} {or}\mspace{14mu} {\lim\limits_{\rho\rightarrow\infty}\frac{\begin{pmatrix} \rho \\ 1 \end{pmatrix}}{\begin{pmatrix} \rho \\ 2 \end{pmatrix}}}} = 0.}$

The math confirms common sense: namely, if Eve sees event A₀, then Eve knows that Alice's data is all zeroes. A practical and large enough noise size enables process 1 or process 3 to effectively hide the data transmission so that outlier events such as A₀, A₁ do not occur in practice. For example, when n=2048, P(A₀)=2⁻²⁰⁴⁸ and P(A₁)=2⁻²⁰³⁷.

Definitions 6, 7 and theorems 5, 6 provide a basis for calculating how big the noise size should be in order to establish an extremely low probability that Eve will see outlier events such as A₀.

Definition 6

ƒ:

→

is an binomial ϵ-tail function if there exists N∈

such that n≥N implies that

${2^{- n}\mspace{11mu} \left( {{\sum\limits_{k = 0}^{f{(n)}}\; \begin{pmatrix} n \\ k \end{pmatrix}} + {\sum\limits_{k = {n - {f{(n)}}}}^{n}\mspace{11mu} \begin{pmatrix} n \\ k \end{pmatrix}}} \right)} < {\epsilon.}$

The area under the standard normal curve from −∞ to x is expressed as

${\Phi (x)} = {\frac{1}{\sqrt{2\pi}}{\int_{- \infty}^{x}{e^{{- \frac{1}{2}}t^{2}}\ {{dt}.}}}}$

Theorem 5.

For each c∈

, set ϵ_(c)=4 Φ(−c). The function

${g_{c}(n)} = {\max \left\{ {0,\left\lfloor {\frac{n}{2} - {c\frac{\sqrt{n}}{2}}} \right\rfloor} \right\}}$

is a binomial ϵ_(c)-tail function. PROOF. This is an immediate consequence of the central limit theorem [21, 22], applied to the binomial distribution. Some details are provided.

Define

${B_{n}(x)} = {2^{- n}{\sum\limits_{k = 0}^{\lfloor x\rfloor}{\begin{pmatrix} n \\ k \end{pmatrix}.}}}$

In [23], DeMoivre proved for each fixed x that

${\lim\limits_{n\rightarrow\infty}\; {B_{n}\left( {\frac{n}{2} + {x\frac{\sqrt{n}}{2}}} \right)}} = {{\Phi (x)}.}$

Thus,

${\lim\limits_{n\rightarrow\infty}{2^{- n}{\sum\limits_{k = 0}^{g_{c\;}{(n)}}\begin{pmatrix} n \\ k \end{pmatrix}}}} = {\frac{1}{\sqrt{2\pi}}{\int\limits_{- \infty}^{- c}{e^{{- \frac{1}{2}}t^{2}}{{dt}.}}}}$

Now ϵ_(c) is four times the value of

${\frac{1}{\sqrt{2\pi}}{\int\limits_{- \infty}^{- c}{e^{{- \frac{1}{2}}t^{2}}{dt}}}},$

which verifies that g_(c) is a binomial ϵ_(c)-tail function.

Example 1

This example provides some perspective on some ϵ-tails and Eve's conditional probabilities. For n=2500, the scatter mean μ is 1250 and the standard deviation

$\sigma = {\frac{\sqrt{2500}}{2} = 25.}$

Set c=20, so μ−cσ=750. A calculation shows that

${2^{- 2500}{\sum\limits_{j = 0}^{750}\begin{pmatrix} 2500 \\ j \end{pmatrix}}} < {10^{- 91}.}$

For n=4096, the scatter mean is 2048 and the standard deviation σ=32. Set c=50 standard deviations, so μ−cσ=448. A calculation shows that

${2^{- 4096}{\sum\limits_{j = 0}^{448}\begin{pmatrix} 4096 \\ j \end{pmatrix}}} < {10^{- 621}.}$

Some of Eve's conditional probabilities are calculated for n=2500 and data size m=576. The average number of 1's in a key is μ_(key)=288 and the standard deviation σ_(key)=12.

A typical case is when j=300 and k=1275, which are both one standard deviation to the right of the data and scatter mean, respectively. When Eve's conditional probability equals 2^(−m), the secrecy ratio is exactly 1. Using equation 7.3, a computer calculation shows that the secrecy ratio is

${\frac{P\left( B_{l,300} \middle| A_{1275} \right)}{2^{- 576}} \approx 1.576},$

so 2⁻⁵⁷⁶<P(B_(l,300)|A₁₂₇₅)<2⁻⁵⁷⁵.

A rare event is when j=228 and k=1225. That is, j=228 is five standard deviations to the left of key and k=1225 is one standard deviation to the left of the scatter mean. A calculation shows that

$\frac{P\left( B_{l,228} \middle| A_{1225} \right)}{2^{- 576}} \approx {0.526.}$

Thus, 2⁻⁵⁷⁷<P(B_(l,228)|A₁₂₂₅)<2⁻⁵⁷⁶.

An extremely rare event occurs when j=228 and k=1125. Event A₁₁₂₅ is 4 standard deviations to the left.

$\frac{P\left( B_{l,228} \middle| A_{1125} \right)}{2^{- 576}} \approx 3840.$

Thus, 2⁻⁵⁶⁵<P(B_(l,228)∥A₁₁₂₅)<2⁻⁵⁶⁴. While a secrecy ratio of 3840 is quite skew, it still means that even if Eve sees a scatter transmission 4 standard deviations to the left, there is still a probability in the interval [2⁻⁵⁶⁵, 2⁻⁵⁶⁴] of Alice's data element being the event B_(l,228).

Even when Eve sees a highly skewed, scattered transmission and obtains some information about the current hidden data element, Eve's observation provides her with no information about the next data element hidden in a subsequent transmission. The secrecy ratio calculations in example 1 provide the motivation for definition 7.

Definition 7

Let ϵ>0. Eve's conditional probabilities P(B_(l,j)|A_(k(ρ))) are ϵ-close to perfect secrecy if there exists a binomial ϵc-tail function ƒ such that for any function k:

→

satisfying ƒ(ρ)≤k(ρ)≤ρ−ƒ(ρ), then

${\lim\limits_{\rho\rightarrow\infty}{P\left( B_{l,j} \middle| A_{k{(\rho)}} \right)}} = {2^{- m}.}$

Theorem 6.

For any ϵ>0, there exists M∈

such that ϵ_(c)<ϵ for all c≥M and c∈

. Furthermore, function g_(c) is a binomial ϵ_(c)-tail function that makes Eve's conditional probabilities P(B_(l,j)|A_(k(ρ))) ϵ_(c)-close to perfect secrecy, where g_(c)(ρ)≤k(ρ)≤ρ−g_(c)(ρ).

PROOF. Since

${{\lim\limits_{x\rightarrow\infty}{\Phi \left( {- x} \right)}} = 0},$

there exists M∈

such that ϵ_(c)<ϵ for all c≥M. Recall that

${h_{c}(\rho)} = {\max {\left\{ {0,{\frac{\rho}{2} - \left\lfloor {c\frac{\sqrt{\rho}}{2}} \right\rfloor}} \right\}.}}$

For all ρ∈

, |g_(c)(ρ)−h_(c)(ρ)|≤1 and g_(c)(4ρ²)−h_(c)(4ρ²)=0. This fact and h_(c) is a binomial c-standard deviations function together imply that lemma 3 and hence theorem 4 also hold for function g_(c). That is,

${\lim\limits_{\rho\rightarrow\infty}{P\left( B_{l,j} \middle| A_{g_{c}{(\rho)}} \right)}} = {2^{- m}.}$

Whenever function k satisfies g_(c)(ρ)≤k(ρ)≤ρ−g_(c)(ρ), this implies k is a binomial c+1-standard deviations function. Thus, this theorem immediately follows from theorems 4, 5 and from definition 7.

7.12 Data Transformations

In some embodiments, the key or data may be transformed by the sender (Alice) before being scattered and subsequently transmitted to the receiver (Bob). In an embodiment, each bit of the key or the data may be transformed according to the map Φ:{0, 1}→{01, 10} where Φ(0)=01 and Φ(1)=10. Suppose the data is K=010010000. Φ⁻¹ denotes the inverse of Φ. The inverse of Φ is used by Bob to reconstruct the data d₁ d₂ . . . d_(m) from the transformed data t₁ t₂ . . . t_(2m) after Bob extracts t₁ t₂ . . . t_(2m) from the scattered transmission received from Alice. Note that Φ⁻¹(01)=0 and Φ⁻¹(10)=1. In some embodiments, data transformation instructions 126, shown in FIG. 1B, compute map Φ and inverse map Φ⁻¹.

After applying Φ to each bit of K, the transformation is Φ(0) Φ(1) Φ(0) Φ(0) Φ(1) Φ(0) Φ(0) Φ(0) Φ(0)=01 10 01 01 10 01 01 01 01. After this transformation by Φ, each of these 18 bits is scattered inside random noise. Suppose K is scattered inside of 130 bits of noise, then the location space will be

_(18,148). A scatter map π in

_(18,148) has 18 locations. That is, π=(l₁, l₂, . . . , l₁₈) and each l_(i) satisfies 1≤l_(i)≤148.

FIG. 12 shows an embodiment with l₁=37, l₂=29, l₁₇=4 and l₁₈=147. In other embodiments, when the Φ transformation is used, for a data size m, a scatter map is selected from

_(2m,n) to hide the transformed 2m bits inside of n−2m bits of random noise. In an embodiment, the data size may be m=32. In another embodiment, the data size may be m=128. In another embodiment, the data size may be m=1000. In another embodiment, the data size may be m=4096. In another embodiment, the data size may be m=512000.

In alternative embodiments, the map Ψ:{0, 1}→{01, 10} where Ψ(0)=10 and Ψ(1)=01, may be used to transform the data before scattering (hiding) the data inside the noise. In an embodiment, the map Ψ transforms the 16 bits of data 0100 1110 1001 0110 to a 32-bit transformation 10011010 01010110 01101001 10010110, before this 32-bit transformation is scattered by the sender (Alice) inside of random noise. After Bob extracts the transformed data 10011010 01010110 01101001 10010110 from the scattered transmission, Bob applies the inverse of Ψ to each substring of two bits. For the first two bits, Ψ⁻¹(10)=0, so d₁=0. For bits 3 and 4, Bob computes Ψ⁻¹(01)=1, so Bob reconstructs d₂=1. For bits 5 and 6, Bob computes Ψ⁻¹(10)=0, so his third reconstructed data bit d₃=0. Bob continues this reconstruction of the 16th bit of data with bits 31 and 32 and computes Ψ⁻¹(10)=0, and reconstructs bit d₁₆=0. In some embodiments, data transformation instructions 126, shown in FIG. 1B, compute map Ψ and inverse map Ψ⁻¹.

Before the scatter map process using a data transformation is started, an element π∈

_(2m,n) is randomly selected and securely distributed to Alice and Bob. Note 2m<n.

Hiding Process 5. Scatter Map Method using a Data Transformation Ψ

Alice and Bob already have secret scatter map π=(l₁, l₂ . . . l_(2m)).

-   -   A Alice generates data d₁ d₂ . . . d_(m) and noise r₁ r₂ . . .         r_(n−2m) from her random noise generator.     -   B Alice transforms data d₁ d₂ . . . d_(m) to t₁ t₂ . . . t_(2m)         with transformation Ψ.     -   C According to definition 3, Alice uses π to set s_(l) ₁ =t₁ . .         . s_(l) _(2m) =t_(2m).     -   D Per definition 3, Alice stores the noise at noise (unoccupied)         locations in         =(s₁ . . . s_(n)) so that the transformed data is hidden inside         the noise.     -   E Alice sends         =(s₁ . . . s_(n)) to Bob.     -   F Bob uses scatter map π to extract the transformed data t₁ . .         . t_(2m) from         .     -   G Bob applies the inverse of Ψ to t₁ . . . t_(2m) and reads data         d₁ d₂ . . . d_(m).

7.13 Hiding Data Elements with Authentication

It is assumed that Alice and Bob have previously established secret scatter map σ=(l₁, l₂ . . . l_(m)) and authentication key κ. In some embodiments, Alice and Bob may establish scatter map σ and authentication key κ with a Diffie-Hellman-Merkle exchange [24, 25], where their public keys are signed in a secure computing or private manufacturing environment; alternatively, in other embodiments, Alice and Bob may establish a and κ via a different channel or in the same physical location by a face to face exchange or using a physical delivery by a mutually trusted courier.

Let h_(κ) denote an MAC (e.g., HMAC [35] or [36]) function which will be used to authenticate the scattered transmission. The use of h_(κ) helps hinder the following attack by Eve. An active Eve could flip a bit at bit location l in the scattered transmission. If no authentication occurs on the noise and the hidden key bits, then upon Alice resending a scattered transmission due to Alice and Bob not arriving at the same session key secret, Eve gains information that l lies in σ. If the scattered transmission

is not authenticated, Eve's manipulation of the bits in

helps her violate rule 4.

Hiding Process 6. Hiding One or More Keys with Authentication Alice's random generator creates one or more keys k₁ k₂ . . . k_(m) and random noise r₁ r₂ . . . r_(ρ). Per definition 3, Alice uses scatter map σ to set s_(l) ₁ =k₁ . . . s_(l) _(m) =k_(m). Alice stores the noise r₁ r₂ . . . r_(ρ) at noise (unoccupied) locations in

=(s₁ . . . s_(n)) so that her one or more keys k₁ k₂ . . . k_(m) are hidden inside the noise. Alice sends

and h_(κ)(

) to Bob. Bob receives

′ and h_(κ)(

) from Alice. Bob computes h_(κ)(

′) and checks it against h_(κ)(

). If h_(κ)(

′) is valid, Bob uses scatter map σ to extract one or more keys k₁ . . . k_(m) from

; else Bob rejects

′ and asks Alice to resend

.

In some embodiments of process 6, scatter map σ is executed by scatter map instructions 130 (FIG. 1B) and these instructions follow definition 3. In some embodiments of process 6, Alice's random noise generator is implemented with random noise generator 128 (FIG. 1B). In some embodiments of process 6, Alice's random noise generator uses a light emitting diode as shown in FIGS. 9 and 10. In some embodiments of process 6, the key k₁ . . . k_(m) has no bias and has the same probability distribution as the noise r₁ r₂ . . . r_(ρ). In some embodiments of process 6, the data elements e₁ . . . e_(m) are encrypted plaintext data instead of a key.

In some embodiments of process 6, the probability distribution of the data elements is biased and the probability distribution of the noise is biased. In preferred embodiments, the probability distribution of the data elements is the same as the probability distribution of the noise even though they are both biased.

In some embodiments, the probability distribution of the data elements is almost the same the probability distribution of the noise. Almost the same probability distribution means that an average hacker that is eavesdropping on the hidden data transmissions would not be able to find where the data is being hidden after a seeing the hidden transmissions for a reasonable amount of time. In an embodiment, a reasonable amount of time is 3 months. In another embodiment, a reasonable amount of time is 1 year. In another embodiment, a reasonable amount of time is 5 years.

In other embodiments, Alice encrypts plaintext data d₁, . . . d_(m) with a block or stream cipher before the encrypted data e₁, . . . e_(m) is hidden in random noise; this is described in process 7 below.

Hiding Process 7. Hiding Encrypted Data Elements with Authentication Alice's uses encryption algorithm ε and key K to encrypt data M=d₁ d₂ . . . d_(m) as

(M,K)=e₁ e₂ . . . e_(m). Per definition 3, Alice uses scatter map σ to set s_(l) ₁ =e₁ . . . s_(l) _(m) =e_(m). Alice's random noise generator creates noise r₁ r₂ . . . r_(ρ). Alice stores the noise r₁ r₂ . . . r_(p) at noise (unoccupied) locations in

=(s₁ . . . s_(n)) so that the encrypted data e₁ e₂ . . . e_(m) is hidden inside the noise. Alice sends

and h_(κ)(

) to Bob. Bob receives

′ and h_(κ)(

) from Alice. Bob computes h_(κ)(

′) and checks it against h_(κ)(

). If h_(κ)(

′) is valid, Bob uses scatter map σ to extract e₁ . . . e_(m) from

and subsequently uses decryption algorithm

and key K to decrypt e₁ . . . e_(m) and obtain d₁ . . . d_(m). else Bob rejects

′ and asks Alice to resend

.

In some embodiments of process 7, catter map σ is executed by scatter map instructions 130 (FIG. 1B) and these instructions follow definition 3. In some embodiments of process 7, Alice's random noise generator is implemented with random noise generator 128 (FIG. 1B). In some embodiments of process 7, Alice's random noise generator uses a light emitting diode as shown in FIGS. 9 and 10. In some embodiments, the encrypted data e₁ . . . e_(m) has no bias and has the same probability distribution as the noise r₁ r₂ . . . r_(ρ).

In some embodiments of process 7, encryption algorithm ε is the block cipher Serpent [14] and is executed with cipher instructions 129 as shown in FIG. 1B. In some embodiments of process 7, encryption algorithm

is the block cipher AES [13], and is executed with cipher instructions 129.

In some embodiments of process 7, encryption algorithm

is a block cipher and also uses the cipher block chaining mode. In some embodiments of process 7, encryption algorithm

is a stream ciper.

7.14 Some Complexity Analysis of Hidden Encrypted Data

Suppose that the encrypted data element e₁ e₂ . . . e₁₂₈ has 128 bits and these bits are hidden inside of 128 bits r₁ r₂ . . . r₁₂₈ of random noise. In an embodiment following process 7, block cipher Serpent is executed with cipher instructions 126 to encrypt the data element as e₁ e₂ . . . e₁₂₈ before scatter map instructions 130 are applied to hide encrypted bits e₁ e₂ . . . e₁₂₈ in random noise r₁ r₂ . . . r₁₂₈ produced by random number generator 128.

The hiding of encrypted bits e₁ e₂ . . . e₁₂₈ by scatter map instructions 130 is shown in FIG. 11. Each encrypted data element is 16 bytes. In FIG. 11, the scatter size n=256 bits. For a scatter size of n=256, there are 256 possible locations to hide the first bit e₁; 255 locations to hide the second bit e₂; . . . ; and 129 locations to hide the 128th bit of encrypted data element e₁₂₈. Note that |

_(128,256)|>10¹⁹². The complexity 10¹⁹² of finding the scatter map σ in

_(128,256) is substantially greater than the complexity of Serpent which is at most 2²⁵⁶<10⁷⁷. In embodiments where more the noise size is larger, the complexity of finding the scatter map can be much greater than 10¹⁹².

When Eve does not receive any auxiliary information (that is, rule 4 holds), it is extremely unlikely that Eve can extract any information about the bit locations even after Eve observes 625,000 encrypted data elements, each hidden in 128 bits of noise. If Eve has the computing power to brute-force search through each element σ∈

_(128,256) an subsequently to find data element e₁ . . . e₁₂₈, Eve still has no way of knowing if this particular a is the one that Alice used to hide encrypted bits e₁ e₂ . . . e₁₂₈. Eve needs some auxiliary information.

7.15 the Scatter Map Process Hides One-Time Locks

Consider the following cryptographic method. Alice places her one-time lock a on message m and transmits m⊕a to Bob. Bob applies his one-time lock b and sends m⊕a⊕b back to Alice. Alice removes her lock, by applying a to m⊕a⊕b and sends me b back to Bob. Bob removes lock b from m⊕b to read message m. This method of one-time locks is vulnerable if Eve can see the three transmissions m⊕a, m⊕a⊕b and m⊕b because Eve can compute m=(m⊕a)⊕(m⊕a⊕b)⊕(m⊕b).

In an embodiment, process 8 protects these one-time locks by using two distinct and independent scatter maps π_(A), π_(B) to hide each transmission inside a new generation of random noise. Independent means that any information given to Eve about π_(B) tells Eve nothing about π_(A) and vice versa. In terms of conditional probabilities, independence means P(π_(A)=(l₁ . . . l_(κ))∈

_(κ,n)|π_(B)=(j₁ . . . j_(κ)))=P(π_(A)=(l₁ . . . l_(κ))∈

_(κ,n)). Using these independent scatter maps, Eve is no longer able to see the three transmissions m⊕a, m⊕a⊕b and m⊕b because the encrypted data m⊕a, and the twice encrypted data m⊕a⊕b and the second party encrypted data m⊕b are each hidden inside of a new generation of random noise.

Hiding Process 8. Scattered One Time Locks Alice and Bob possess secret scatter maps π_(A) = (l₁, l₂...l_(κ)), π_(B) = (j₁, j₂...j_(κ)) ∈  

 _(κ,n). Eve does not know κ and π_(A) and π_(B). while Alice has more κ-bit message blocks m₁ m₂ ... m_(k) to encrypt {  Alice generates her lock a₁ a₂ ... a_(k) and noise r₁ r₂ ... r_(n−κ) from her random noise  generator.  Per definition 3, Alice uses π_(A) to set s_(l) ¹ = a₁ ⊕ m₁ ... s_(l) _(k) = a_(κ) ⊕ m_(k).  Using noise r₁ r₂ ... r_(κ) Alice completes scatter S = (s₁...s_(n)) and sends to Bob.  Bob extracts a₁ ⊕ m₁ ... a_(κ) ⊕ m_(k) from S, using scatter map π_(A).  Bob generates his lock b₁ b₂ ... b_(κ) and noise q₁ q₂ ... q_(n−κ) from his random noise  generator.  Per definition 3, Bob uses π_(B) to set t_(j) ₁ = b₁ ⊕ a₁ ⊕ m₁ ... t_(j) _(κ) = b_(κ) ⊕ a_(κ) ⊕ m_(κ).  Using noise q₁ q₂ ... q_(κ) Bob completes scatter  

  = (t₁...t_(n)) and sends to Alice.  Alice extracts b₁ ⊕ a₁ ⊕ m₁ ... b_(κ) ⊕ a_(κ) ⊕ m_(κ) from  

 , using scatter map π_(B).  Alice removes her lock a₁ ... a_(k) by computing a₁ ⊕ (b₁ ⊕ a₁ ⊕ m₁) ...  a_(κ) ⊕ (b_(κ)⊕ a_(κ) ⊕ m_(κ)). Alice generates noise p₁ p₂ ... p_(n−κ), from her random noise  generator.  Per definition 3, Alice uses π_(A) to set u_(l) ₁ = b₁ ⊕ m₁ ... u_(l) _(κ) = b_(κ) ⊕ m_(κ).  Using noise p₁ p₂ ... p_(κ) Alice completes scatter  

  = (u₁ ... u_(n)) and sends to Bob.  Bob extracts b₁ ⊕ m₁ ... b_(κ) ⊕ m_(κ) from  

 , using scatter map π_(A).  Bob removes his lock b₁ ... b_(κ) by computing b₁ ⊕ (b₁ ⊕ m₁) ... b_(κ) ⊕ (b_(κ) ⊕ m_(κ)). }

In an alternative embodiment, Alice and Bob use a third, distinct scatter map π_(C), created independently from π_(A) and π_(B). Scatter map π_(C) helps Alice scatter b₁⊕m₁ . . . b_(κ)⊕m_(κ) after removing her lock. This alternative embodiment is shown in process 9.

Hiding Process 9. Scattered One Time Locks with 3 Scatter Maps Alice and Bob possess secret scatter maps π_(A) = (l₁, l₂...l_(κ)), π_(B) = (j₁, j₂...j_(κ)) ∈  

 _(κ,n) and π_(C) = (i₁, i₂...i_(κ)) ∈  

 _(κ,n) Eve does not know π_(A) and π_(B) and π_(C). while Alice has more κ-bit message blocks m₁ m₂ ... m_(κ) to encrypt {  Alice generates her lock a₁ a₂ ... a_(κ) and noise r₁ r₂ ... r_(n−κ) from her random noise  generator.  Per definition 3, Alice uses π_(A) to set s_(l) ₁ = a₁ ⊕ m₁ ... s_(l) _(κ) = a_(κ) ⊕ m_(κ).  Using noise r₁ r₂ ... r_(κ) Alice completes scatter S = (s₁...s_(n))  Alice sends S = (s₁...s_(n)) to Bob.  Bob extracts a₁ ⊕ m₁ ... a_(κ) ⊕ m_(κ) from S, using scatter map π_(A).  Bob generates his lock b₁ b₂ ... b_(κ) and noise q₁ q₂ ... q_(n−κ) from his random noise  generator.  Per definition 3, Bob uses π_(B) to set t_(j) ₁ = b₁ ⊕ a₁ ⊕ m₁ ... t_(j) _(κ) = b_(κ) ⊕ a_(κ) ⊕ m_(κ).  Using noise q₁ q₂ ... q_(κ) Bob completes scatter  

  = (t₁...t_(n)) and sends to Alice.  Alice extracts b₁ ⊕ a₁ ⊕ m₁ ... b_(κ) ⊕ a_(κ) ⊕ m_(κ) from  

 , using scatter map π_(B).  Alice removes her lock a₁ ... a_(κ) by computing a₁ ⊕ (b₁ ⊕ a₁ ⊕ m₁) ...  a_(κ) ⊕ (b_(κ)⊕ a_(κ) ⊕ m_(κ)). Alice generates noise p₁ p₂ ... p_(n−κ) from her random noise  generator.  Per definition 3, Alice uses π_(C) to set u_(l) ₁ = b₁ ⊕ m₁ ... u_(l) _(κ) = b_(κ) ⊕ m_(κ).  Using noise p₁ p₂ ... p_(κ) Alice completes scatter  

  = (u₁...u_(n)) and sends to Bob.  Bob receives  

  = (u₁...u_(n)).  Bob extracts b₁ ⊕ m₁ ... b_(κ) ⊕ m_(κ) from  

 , using scatter map π_(C).  Bob removes his lock b₁ ... b_(κ) by computing b₁ ⊕ (b₁ ⊕ m₁) ... b_(κ) ⊕ (b_(κ) ⊕ m_(κ)). }

In an embodiment of process 9, scatter maps π_(A), π_(B) and π_(C) are executed by scatter map instructions 130 (FIG. 1B) and these instructions follow definition 3. In FIG. 2B, processor system 258 executes scatter map process instructions 130 during the execution of scatter maps π_(A), π_(B) and π_(C). In an embodiment, scatter map process instructions 130 for π_(A), π_(B) and π_(C) are stored in memory system 256 (FIG. 2B).

In an embodiment of process 9, output system 252 in FIG. 2B is used during the step Alice sends

=(s₁ . . . s_(n)) to Bob. Output system 252 is part of sending machine 102 in FIG. 1A. In an embodiment of process 9, input system 254 in FIG. 2B is used during the step Bob receives

=(u₁ . . . u_(n)). Input system 254 is a part of receiving machine 112 in FIG. 1A.

In other alternative, embodiments, the message size κ is known to Eve.

In preferred embodiments, each scatter transmission should use a new lock and new noise. For example, if due to a failed transmission, Alice or Bob generated new noise but transmitted the same values of a₁⊕m₁ . . . a_(κ)⊕m_(κ) and b₁⊕m₁ . . . b_(κ)⊕m_(κ) and b₁⊕a₁⊕m₁ . . . b_(κ)⊕a_(κ)⊕m_(κ), then Eve could run a matching or correlation algorithm between the scatters

,

or

in order to extract a permutation of message m₁ . . . m_(κ). During any kind of failed transmission, Alice and Bob should generate new locks from their respective random noise generators, just as they have to do for every iteration of the while loop in process 8.

In process 8, Alice's lock a₁ . . . a_(κ) is generated from her random noise generator. Hence, for every (x₁, . . . , x_(κ))∈{0, 1}^(κ), the probability P(a₁⊕m₁=x₁, . . . a_(κ)⊕m_(κ)=x_(κ))=2^(−κ). Similarly, Bob's lock b₁ . . . b_(κ) is generated from his random noise generator, so the probability P(b₁⊕m₁=x₁, . . . b_(κ)⊕m_(κ)=x_(κ))=2^(−κ) for every (x₁, . . . , x_(κ))∈{0, 1}^(κ).

7.16 Key Exchange

A Diffie-Hellman exchange [25] is a key exchange method where two parties (Alice and Bob)—that have no prior knowledge of each other—jointly establish a shared secret over an unsecure communications channel. Sometimes the first party is called Alice and the second party is called Bob. Before the Diffie-Hellman key exchange is described it is helpful to review the mathematical definition of a group. A group G is a set with a binary operation * such that the following four properties hold: (i.) The binary operation * is closed on G. This means a*b lies in G for all elements a and b in G. (ii.) The binary operation * is associative on G. That is, a*(b*c)=(a*b)*c for all elements a, b, and c in G (iii.) There is a unique identity element e in G, where a*e=e*a=a. (iv). Each element a in G has a unique inverse denoted as a⁻¹. This means a*a⁻¹=a⁻¹*a=e.

g*g is denoted as g²; g*g*g*g*g is denoted as g⁵. Sometimes, the binary operation * will be omitted so that a*b is expressed as ab.

The integers { . . . , 2,1,0,1, 2, . . . } with respect to the binary operation+are an example of an infinite group. 0 is the identity element. For example, the inverse of 5 is 5 and the inverse of 107 is 107.

The set of permutations on n elements {1, 2, . . . , n}, denoted as S_(n), is an example of a finite group with n! elements where the binary operation is function composition. Each element of S_(n) is a function p:{1, 2, . . . , n}→{1, 2, . . . , n} that is 1 to 1 and onto. In this context, p is called a permutation. The identity permutation e is the identity element in S_(n), where e(k)=k for each k in {1, 2, . . . , n}.

If H is a non-empty subset of a group G and H is a group with respect to the binary group operation of G, then H is called a subgroup of G. H is a proper subgroup of G if H is not equal to G (i.e., H is a proper subset of G). G is a cyclic group if G has no proper subgroups.

Define A_(n)=

_(n)−[0]={[1], . . . , [n−1]}; in other words, A_(n) is the integers modulo n with equivalence class [0] removed. If n=5, [4]*[4]=[16 mod 5]=[1] in (

₅, *) Similarly, [3]*[4]=[12 mod 5]=[2] in (

₅, *). Let (a, n) represent the greatest common divisor of a and n. Let U_(n)={[a] ∈A_(n):(a, n)=1}. Define binary operator on U_(n) as [a]*[b]=[ab], where ab is the multiplication of positive integers a and b. Then (U_(n), *) is a finite, commutative group.

Suppose g lies in group (G, *). This multiplicative notation works as follows: g²=g*g. Also g³=g*g*g; and so on. This multiplicative notation (superscripts) is used in the description of the Diffie-Hillman key exchange protocol described below.

For elliptic curves [26] the Weierstrauss curve group operation geometrically takes two points, draws a line through these two points, finds a new intersection point and then reflects this new intersection point about the y axis. When the two points are the same point, the commutative group operation computes a tangent line and then finds a new intersection point.

In another embodiment, elliptic curve computations are performed on an Edwards curve over a finite field. When the field K does not have characteristic two, an Edwards curve is of the form: x²+y²=1+dx²y², where d is an element of the field K not equal to 0 and not equal to 1. For an Edwards curve of this form, the group binary operator * is defined

${{\left( {x_{1},y_{1}} \right)*\left( {x_{2},y_{2}} \right)} = \left( {\frac{{x_{1}y_{2}} + {x_{2}y_{1}}}{1 + {{dx}_{1}x_{2}y_{1}y_{2}}},\frac{{y_{1}y_{2}} - {x_{1}x_{2}}}{1 - {{dx}_{1}x_{2}y_{1}y_{2}}}} \right)},$

where the elements of the group are the points (x₁, y₁) and (x₂, y₂). The definition of * defines elliptic curve computations that form a commutative group. For more information on Edwards curves, refer to the math journal paper [27].

In an alternative embodiment, elliptic curve computations are performed on a Montgomery curve over a finite field. Let K be the finite field over which the elliptic curve is defined. A Montgomery curve is of the form By²=x³+Ax²+x, for some field elements A, B chosen from K where B(A²−4)≠0. For more information on Montogomery curves, refer to the publication [28].

There are an infinite number of finite groups and an infinite number of these groups are huge. The notion of huge means the following: if 2¹⁰²⁴ is considered to be a huge number based on the computing power of current computers, then there are still an infinite number of finite, commutative groups with each group containing more than 2¹⁰²⁴ elements.

Before the Diffie-Hellman key exchange is started, in some embodiments, Alice and Bob agree on a huge, finite commutative group (G, *) with group operation * and generating element g in G, where g has a huge order. In some embodiments, Alice and Bob sometimes agree on group (G, *) and element g before before the key exchange starts; g is assumed to be known by Eve. The group operations of G are expressed multiplicatively as explained previously.

In a standard Diffie-Hellman key exchange, Alice executes steps 1 and 3 and Bob executes steps 2 and 4.

1. Alice randomly generates private key a, where a is a large natural number, and sends g^(a) to Bob.

2. Bob randomly generates private key b, where b is a large natural number, and sends g^(b) to Alice.

3. Alice computes (g^(b))^(a).

4. Bob computes (g^(a))^(b).

After the key exchange is completed, Alice and Bob are now in possession of the same shared secret g^(ab). The values of (g^(b))^(a) and (g^(a))^(b) are the same because G is a commutative group. Commutative means ab=ba for any elements a, b in G.

7.17 Hiding a Public Key Exchange

The Diffie-Hellman exchange [24, 25] is vulnerable to active man-in-the-middle attacks [29, 30, 31]. To address man-in-the-middle attacks, processes 10 and 11 show how to hide public session keys during a key exchange. In some embodiments, Alice and Bob have previously established secret scatter map σ=(l₁, l₂ . . . l_(m)) and authentication key κ with a one-time pad [32]. In another embodiment, Alice and Bob may establish σ and κ with a prior (distinct) Diffie-Hellman exchange that is resistant to quantum computers, executing Shor's algorithm [33] or an analogue of Shor's algorithm [34]. Alternatively, Alice and Bob may establish σ and κ via a different channel.

Let h_(κ) denote an MAC (e.g., HMAC [35] or [36]) function which will be used to authenticate the scattered transmission. The use of h_(κ) helps hinder the following attack by Eve. An active Eve could flip a bit at bit location l in the scattered transmission. If no authentication occurs on the noise and the hidden key bits, then upon Alice resending a scattered transmission due to Alice and Bob not arriving at the same session key secret, Eve gains information that l lies in σ. If the scattered transmission

is not authenticated, Eve's manipulation of the bits in

helps her violate rule 4.

Hiding Process 10. First Party Hiding and Sending a Public Key to a Second Party Alice's random noise generator generates and computes private key a. Alice uses group operation * to compute public key g^(a) = k₁ k₂ ... k_(m) from private key a and generator g. Alice generates noise r₁ r₂ ... r_(p) from her random noise generator. Per definition 3, Alice uses σ to find the hiding locations and set s_(l) ₁ = k₁ ... s_(l) _(m) = k_(m). Alice stores noise r₁ r₂ ... r_(p) in the remaining noise locations, resulting in S = (s₁...s_(n)). Alice computes h_(k)(S). Alice sends S and h_(k)(S) to Bob. Bob receives S′ and h_(k)(S) from Alice. Bob computes h_(k)(S′) and checks it against h_(k)(S). If h_(k)(S′) is valid {  Bob uses σ to extract g^(a) = k₁ ... k_(m) from S.  Bob computes shared secret g^(ab). } else {  Bob rejects S′ and asks Alice to resend S. }

Note that Alice sends

and Bob receives

′ because during the transmission from Alice to Bob

may be tampered with by Eve or

may change due to physical effects. In an embodiment of process 10, Bob's steps are performed in receiving machine 112. In an embodiment of process 10, Alice's steps are performed in sending machine 102. In an embodiment of process 10, private key(s) 103 is a and public key(s) 104 is g^(a). In an embodiment of process 10, scatter map σ finds the hiding locations with scatter map instructions 130.

In an embodiment, the size of the transmission

(hidden public keys 109) is n=8192 bits and the noise size ρ=6400. According to σ=(l₁, l₂ . . . l_(m)), the kth bit of P is stored in bit location l_(k). Generator g is an element of a commutative group (G, *) with a huge order. In some embodiments, G is a cyclic group and the number of elements in G is a prime number. In an embodiment, generator g has an order o(g)>10⁸⁰. In another embodiment, generator g has an order o(g) greater than 10¹⁰⁰⁰. In an embodiment, Alice randomly generates with non-deterministic generator 942 in FIG. 9A, which is an instance of random generator 128 and computes private key a with private key instructions 124. In an embodiment, Alice's public key instructions 126 compute her public key as g^(a)=g* . . . *g where g is multiplied by itself a times, using the group operations in (G, *). In some embodiments, the private key is randomly selected from the positive integers {1, 2, 3, . . . , o(g)−1}.

Hiding Process 11. Second Party Hiding and Sending a Public Key to the First Party Bob's random noise generator generates and computes private key b. Bob uses group operation * to compute public key g^(b) = j₁ j₂ ... j_(m) from Bob's private key b and generator g. Bob generates noise q₁ q₂ ... q_(p) from his random noise generator. Per definition 3, Bob uses σ to find the hiding locations and set s_(l) ₁ = j₁ ... s_(l) _(m) = j_(m). Bob stores noise q₁ q₂ ... q_(p) in the remaining noise locations, resulting in  

  = (t₁...t_(n)). Bob computes h_(κ)( 

 ). Bob sends  

  and h_(κ)( 

 ) to Alice. Alice receives  

 ′ and h_(κ)(  

 ) from Bob. Alice computes h_(κ)(  

 ′) and checks it against h_(κ)(  

 ). If h_(k)(  

 ′) is valid {  Alice uses σ to extract g^(b)= j₁ ... j_(m) from  

 .  Alice computes shared secret g^(ba). } else {  Alice rejects  

 ′ and asks Bob to resend  

 . }

Note that Bob sends

and Alice receives

′ because during the transmission from Bob to Alice

may be tampered with by Eve or

may change due to physical effects. In an embodiment of process 11, Alice's steps are performed in receiving machine 112. In an embodiment of process 11, Bob's steps are performed in sending machine 102. In an embodiment of process 11, private key(s) 103 is b and public key(s) 104 is g^(b). In an embodiment of process 11, scatter map σ finds the hiding locations with scatter map instructions 130.

In an embodiment, Bob randomly generates with non-deterministic generator 952 in FIG. 9B, which is an instance of random generator 128 and computes private key b with private key instructions 124. In an embodiment, Bob's public key instructions 126 compute his public key as g^(b)=g* . . . *g where g is multiplied by itself b times, using the group operations in (G, *). In some embodiments, the private key b is randomly selected from the positive integers {1, 2, 3, . . . , o(g)−1}. In some embodiments of 10 and 11, the public keys are computed with elliptic curve computations over a finite field; in other words, G is an elliptic curve group. In other embodiments, the public keys are RSA public keys. In some embodiments, the public keys are public session keys, which means the public session keys change after every transmission

in process 10 and after every transmission

in process 11.

In some embodiments, hiding a public key during an exchange between Alice and Bob has an advantage over hiding a symmetric key: processes 10 and 11 can be used by Alice and Bob, before a subsequent encrypted communication, to communicate a short authentication secret (SAS) [37] via a different channel.

Let a, b be Alice and Bob's private keys, respectively. Let e₁, e₂ be Eve's private keys. For a key exchange, if Eve is in the middle, Eve computes g^(e) ¹ ^(a) with Alice; Eve computes g^(e) ² ^(a) with Bob. When Alice and Bob verify their SAS with high probability g^(e) ¹ ^(a)≠g^(e) ¹ ^(b) when |G| is huge. Thus, h_(κ)(g^(e) ¹ ^(a))≠h_(κ)(g^(e) ¹ ^(b)) with high probability, regardless of whether Eve's private keys satisfy e₁≠e₂. By communicating their short authentication secret to each other via a different channel, Alice and Bob can detect that Eve captured a before processes 10 and 11 were executed. Eve cannot duplicate the SAS secret because Eve doesn't know Alice's private key a and Eve doesn't know Bob's private key b. This type out-of-channel authentication won't work for symmetric keys hidden inside noise. Furthermore, one anticipates that Eve will try to capture a since complexity analysis can show that if Eve doesn't know σ, the complexity for Eve performing a man-in-the-middle can be substantially greater than the conjectured complexity of the public session keys when the noise size is sufficiently large.

It it is important to recognize the difference between SAS and hiding the public keys in random noise: they are complementary methods. SAS helps notify Alice and Bob that a man-in-the-middle on a standard Diffie-Hellman exchange has occurred, but SAS DOES NOT stop a man-in-the-middle attack. SAS does not stop an adversary who has unforeseen computing power or unknown mathematical techniques. The standard Diffie-Hellman exchange depends upon the conjectured computational complexity of the underlying commutative group operation * on G. If Eve is recording all network traffic, hiding public session keys inside random noise can stop Eve from breaking the standard key exchange even if Eve has already discovered a huge, computational or mathematical breakthrough on the underlying group G or if Eve finds one at some point in the future. Public keys that are resistant to quantum computing algorithms such as Shor's algorithm are quite large (e.g., 1 million bytes and in some cases substantially larger than 1 million bytes). In contrast, 1024 bytes of hidden public keys inside noise can provide adequate protection against quantum algorithms; in other embodiments, 4096 bytes of hidden public keys inside noise provides strong protection against quantum algorithms. Processes 10 and 11 complementary property to SAS depends upon Eve not obtaining σ; in some embodiments, a one-time pad may be feasible to establish a between Alice and Bob.

Although the invention(s) have been described with reference to specific embodiments, it will be under-stood by those skilled in the art that various changes may be made and equivalents may be substituted for elements thereof without departing from the true spirit and scope of the invention. In addition, modifications may be made without departing from the essential teachings of the invention.

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1. An information system comprising: generating noise from a non-deterministic generator, the noise having a probability distribution; hiding data inside the noise with a machine, the machine having a processor system and a memory system; the data having a probability distribution, wherein the probability distribution of the data is ϵ-close to the probability distribution of the noise; wherein ϵ is greater than zero.
 2. The system of claim 1 further comprising: wherein ϵ<⅕.
 3. The system of claim 1 further comprising: generating the noise based at least on a behavior of photons.
 4. The system of claim 1 further comprising: a first party selecting a hiding location for each part of the data; the first party storing each part of the data in the hiding location that was selected; the first party storing the noise in the remaining locations that are unoccupied by parts of the data.
 5. An information system comprising: generating noise from a non-deterministic generator; encrypting data with a machine; the machine having having a processor system and a memory system, the processor system including one or more processors; hiding the encrypted data inside the noise; wherein the probability distribution of the encrypted data is e-close to the probability distribution of the noise; wherein ϵ is greater than zero.
 6. The system of claim 5 wherein a block cipher encrypts the data.
 7. The system of claim 5 further comprising: the first party transmitting the encrypted data that was hidden inside the noise to a second party; the second party computes a map to find the hiding locations of the parts of the encrypted data; the second party extracting the encrypted data from the noise based on the map.
 8. The system of claim 5 further comprising: the first party computes a map to find the hiding locations of the parts of the encrypted data; the first party storing the encrypted data in the noise based on the hiding locations; the first party decrypting the first party's encryption from the encrypted data;
 9. An information system comprising: generating noise with a machine; the machine having a processor system and a memory system, the processor system including one or more processors; encrypting data with the machine; the machine hiding the encrypted data inside the noise; wherein the probability distribution of the noise is ϵ-close to the probability distribution of the encrypted data; wherein ϵ is greater than zero.
 10. The system of claim 9 wherein a block cipher encrypts said data.
 11. The system of claim 9 further comprising: wherein ϵ<⅕
 12. The system of claim 9 further comprising: a first party selecting a hiding location for each part of the encrypted data; the first party storing each part of the encrypted data in the hiding location that was selected; the first party storing the noise in the remaining locations that are unoccupied by parts of the encrypted data.
 13. A process comprising: generating noise from a non-deterministic generator; hiding data inside the noise with a machine; the machine having a processor system and a memory system, the processor system including one or more processors; wherein the hiding of the data stores the data at locations and the noise at other locations based on a map.
 14. The process of claim 13 further comprising: wherein the probability distribution of the noise is ϵ-close to the probability distribution of the data; wherein ϵ is greater than zero.
 15. The process of claim 13 further comprising: during a second instance of hiding the data the locations of the data and the locations of noise have changed.
 16. The process of claim 13 further comprising: during a second instance of hiding the data the map has changed, resulting in a change of the locations of the data and noise.
 17. The process of claim 13 further comprising: generating the noise is at least based on the behavior of photons.
 18. The process of claim 17 further comprising: emitting said photons from a light emitting diode.
 19. The process of claim 17 further comprising: generating the noise based at least on arrival times of emitted photons.
 20. A process comprising: generating noise from a machine; hiding data inside the noise with a machine, the machine having a processor system and a memory system, the processor system including one or more processors; wherein the hiding of the data stores the data at locations and the noise at other locations based on a map. 